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PaddleX

🔍 简介

PaddleX 3.0 是基于飞桨框架构建的低代码开发工具,它集成了众多开箱即用的预训练模型,可以实现模型从训练到推理的全流程开发,支持国内外多款主流硬件,助力AI 开发者进行产业实践。

通用图像分类 图像多标签分类 通用目标检测 通用实例分割
通用语义分割 图像异常检测 通用OCR 通用表格识别
文本图像智能分析 时序预测 时序异常检测 时序分类

🛠️ 安装

!!! warning

安装 PaddleX 前请先确保您有基础的 <b>Python 运行环境</b>(注:当前支持Python 3.8 ~ Python 3.10下运行,更多Python版本适配中)。

安装 PaddlePaddle

=== "CPU"

```bash
python -m pip install paddlepaddle==3.0.0b2 -i https://www.paddlepaddle.org.cn/packages/stable/cpu/
```

=== "CUDA 11.8"

```bash
python -m pip install paddlepaddle-gpu==3.0.0b2 -i https://www.paddlepaddle.org.cn/packages/stable/cu118/
```

=== "CUDA 12.3"

```bash
python -m pip install paddlepaddle-gpu==3.0.0b2 -i https://www.paddlepaddle.org.cn/packages/stable/cu123/
```

❗ 更多飞桨 Wheel 版本请参考飞桨官网

安装PaddleX

pip install paddlex==3.0.0b2

❗ 更多安装方式参考 PaddleX 安装教程

💻 命令行使用

一行命令即可快速体验产线效果,统一的命令行格式为:

paddlex --pipeline [产线名称] --input [输入图片] --device [运行设备]

只需指定三个参数:

  • pipeline:产线名称
  • input:待处理的输入文件(如图片)的本地路径或 URL
  • device: 使用的 GPU 序号(例如gpu:0表示使用第 0 块 GPU),也可选择使用 CPU(cpu

!!! example "OCR相关产线命令行使用"

=== "通用OCR"

    ```bash
    paddlex --pipeline OCR --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/general_ocr_002.png --device gpu:0
    ```

    ??? question "查看运行结果"
        === "输出结果"
            ```bash
            'input_path': '/root/.paddlex/predict_input/general_ocr_002.png',
            'dt_polys': [array([[161,  27],
                [353,  22],
                [354,  69],
                [162,  74]], dtype=int16), array([[426,  26],
                [657,  21],
                [657,  58],
                [426,  62]], dtype=int16), array([[702,  18],
                [822,  13],
                [824,  57],
                [704,  62]], dtype=int16), array([[341, 106],
                [405, 106],
                [405, 128],
                [341, 128]], dtype=int16)
                ...],
            'dt_scores': [0.758478200014338, 0.7021546472698513, 0.8536622648391111, 0.8619181462164781, 0.8321051217096188, 0.8868756173427551, 0.7982964727675609, 0.8289939036796322, 0.8289428877522524, 0.8587063317632897, 0.7786755892491615, 0.8502032769081344, 0.8703346500042997, 0.834490931790065, 0.908291103353393, 0.7614978661708064, 0.8325774055997542, 0.7843421347676149, 0.8680889482955594, 0.8788859304537682, 0.8963341277518075, 0.9364654810069546, 0.8092413027028257, 0.8503743089091863, 0.7920740420391101, 0.7592224394793805, 0.7920547400069311, 0.6641757962457888, 0.8650289477605955, 0.8079483304467047, 0.8532207681055275, 0.8913377034754717],
            'rec_text': ['登机牌', 'BOARDING', 'PASS', '舱位', 'CLASS', '序号 SERIALNO.', '座位号', '日期 DATE', 'SEAT NO', '航班 FLIGHW', '035', 'MU2379', '始发地', 'FROM', '登机口', 'GATE', '登机时间BDT', '目的地TO', '福州', 'TAIYUAN', 'G11', 'FUZHOU', '身份识别IDNO', '姓名NAME', 'ZHANGQIWEI', 票号TKTNO', '张祺伟', '票价FARE', 'ETKT7813699238489/1', '登机口于起飞前10分钟关闭GATESCLOSE10MINUTESBEFOREDEPARTURETIME'],
            'rec_score': [0.9985831379890442, 0.999696917533874512, 0.9985735416412354, 0.9842517971992493, 0.9383274912834167, 0.9943678975105286, 0.9419361352920532, 0.9221674799919128, 0.9555020928382874, 0.9870321154594421, 0.9664073586463928, 0.9988052248954773, 0.9979352355003357, 0.9985110759735107, 0.9943482875823975, 0.9991195797920227, 0.9936401844024658, 0.9974591135978699, 0.9743705987930298, 0.9980487823486328, 0.9874696135520935, 0.9900962710380554, 0.9952947497367859, 0.9950481653213501, 0.989926815032959, 0.9915552139282227, 0.9938777685165405, 0.997239887714386, 0.9963340759277344, 0.9936134815216064, 0.97223961353302]}
            ```

        === "可视化图片"

            <p><img src="https://raw.githubusercontent.com/cuicheng01/PaddleX_doc_images/main/images/boardingpass.png"></p>

=== "通用表格识别"

    ```bash
    paddlex --pipeline table_recognition --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/table_recognition.jpg --device gpu:0
    ```

    ??? question "查看运行结果"
        === "输出结果"
            ```bash
            {'input_path': '/root/.paddlex/predict_input/table_recognition.jpg', 'layout_result': {'input_path': '/root/.paddlex/predict_input/table_recognition.jpg', 'boxes': [{'cls_id': 3, 'label': 'Table', 'score': 0.6014542579650879, 'coordinate': [0, 21, 551, 118]}]}, 'ocr_result': {'dt_polys': [array([[37., 40.],
                [75., 40.],
                [75., 60.],
                [37., 60.]], dtype=float32), array([[123.,  37.],
                [200.,  37.],
                [200.,  59.],
                [123.,  59.]], dtype=float32), array([[227.,  37.],
                [391.,  37.],
                [391.,  58.],
                [227.,  58.]], dtype=float32), array([[416.,  36.],
                [535.,  38.],
                [535.,  61.],
                [415.,  58.]], dtype=float32), array([[35., 73.],
                [78., 73.],
                [78., 92.],
                [35., 92.]], dtype=float32), array([[287.,  73.],
                [328.,  73.],
                [328.,  92.],
                [287.,  92.]], dtype=float32), array([[453.,  72.],
                [495.,  72.],
                [495.,  94.],
                [453.,  94.]], dtype=float32), array([[ 17., 103.],
                [ 94., 103.],
                [ 94., 118.],
                [ 17., 118.]], dtype=float32), array([[145., 104.],
                [178., 104.],
                [178., 118.],
                [145., 118.]], dtype=float32), array([[277., 104.],
                [337., 102.],
                [338., 118.],
                [278., 118.]], dtype=float32), array([[446., 102.],
                [504., 104.],
                [503., 118.],
                [445., 118.]], dtype=float32)], 'rec_text': ['Dres', '连续工作3', '取出来放在网上,没想', '江、整江等八大', 'Abstr', 'rSrivi', '$709.', 'cludingGiv', '2.72', 'Ingcubic', '$744.78'], 'rec_score': [0.9934158325195312, 0.9990204572677612, 0.9967061877250671, 0.9375461935997009, 0.9947397112846375, 0.9972746968269348, 0.9904290437698364, 0.973427414894104, 0.9983080625534058, 0.993423342704773, 0.9964120984077454], 'input_path': 'table_recognition.jpg'}, 'table_result': [{'input_path': 'table_recognition.jpg', 'layout_bbox': [0, 21, 551, 118], 'bbox': array([[  4.395736 ,  25.238262 , 113.31014  ,  25.316246 , 115.454315 ,
                    71.8867   ,   3.7177477,  71.7937   ],
                [110.727455 ,  25.94007  , 210.07187  ,  26.028755 , 209.66394  ,
                    65.96484  , 109.59861  ,  66.09809  ],
                [214.45381  ,  26.027939 , 407.95276  ,  26.112846 , 409.6684   ,
                    66.91336  , 215.27292  ,  67.002014 ],
                [402.81863  ,  26.123789 , 549.03656  ,  26.231564 , 549.19995  ,
                    66.88339  , 404.48068  ,  66.74034  ],
                [  2.4458022,  64.68588  , 102.7665   ,  65.10228  , 105.79447  ,
                    96.051254 ,   2.5367072,  95.35514  ],
                [108.85877  ,  65.80549  , 211.70216  ,  66.02091  , 210.79245  ,
                    94.75581  , 107.59308  ,  94.42664  ],
                [217.05621  ,  64.98496  , 407.76328  ,  65.133484 , 406.8436   ,
                    96.00133  , 214.67896  ,  95.87226  ],
                [401.73572  ,  64.60494  , 547.9967   ,  64.73921  , 548.19135  ,
                    96.09901  , 402.26733  ,  95.95529  ],
                [  2.4882016,  93.589554 , 107.01325  ,  93.67592  , 107.8446   ,
                    120.13259  ,   2.508764 , 119.85027  ],
                [110.773125 ,  93.98633  , 213.354    ,  94.08046  , 212.46033  ,
                    120.80207  , 109.29008  , 120.613045 ],
                [216.08781  ,  94.19984  , 405.843    ,  94.28341  , 405.9974   ,
                    121.33152  , 215.10301  , 121.299034 ],
                [403.92212  ,  94.44883  , 548.30963  ,  94.54982  , 548.4949   ,
                    122.610176 , 404.53433  , 122.49881  ]], dtype=float32), 'img_idx': 0, 'html': '<html><body><table><tr><td>Dres</td><td>连续工作3</td><td>取出来放在网上,没想</td><td>江、整江等八大</td></tr><tr><td>Abstr</td><td></td><td>rSrivi</td><td>$709.</td></tr><tr><td>cludingGiv</td><td>2.72</td><td>Ingcubic</td><td>$744.78</td></tr></table></body></html>'}]}
            ```


        === "可视化图片"
            <p><img src="https://raw.githubusercontent.com/cuicheng01/PaddleX_doc_images/main/images/pipelines/table_recognition/03.png"></p>

=== "通用版面解析"

    ```bash
    paddlex --pipeline layout_parsing --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/demo_paper.png --device gpu:0
    ```

    ??? question "查看运行结果"
        ```bash
        {'input_path': PosixPath('/root/.paddlex/temp/tmp5jmloefs.png'), 'parsing_result': [{'input_path': PosixPath('/root/.paddlex/temp/tmpshsq8_w0.png'), 'layout_bbox': [51.46833, 74.22329, 542.4082, 232.77504], 'image': {'img': array([[[255, 255, 255],
                [255, 255, 255],
                [255, 255, 255],
                ...,
                [213, 221, 238],
                [217, 223, 240],
                [233, 234, 241]],

            [[255, 255, 255],
                [255, 255, 255],
                [255, 255, 255],
                ...,
                [255, 255, 255],
                [255, 255, 255],
                [255, 255, 255]]], dtype=uint8), 'image_text': ''}, 'layout': 'single'}, {'input_path': PosixPath('/root/.paddlex/temp/tmpcd2q9uyu.png'), 'layout_bbox': [47.68295, 243.08054, 546.28253, 295.71045], 'figure_title': 'Overview of RT-DETR, We feed th', 'layout': 'single'}, {'input_path': PosixPath('/root/.paddlex/temp/tmpr_iqa8b3.png'), 'layout_bbox': [58.416977, 304.1531, 275.9134, 400.07513], 'image': {'img': array([[[255, 255, 255],
                [255, 255, 255],
                [255, 255, 255],
                ...,
                [255, 255, 255],
                [255, 255, 255],
                [255, 255, 255]]], dtype=uint8), 'image_text': ''}, 'layout': 'left'}, {'input_path': PosixPath('/root/.paddlex/temp/tmphpblxl3p.png'), 'layout_bbox': [100.62961, 405.97458, 234.79774, 414.77414], 'figure_title': 'Figure 5. The fusion block in CCFF.', 'layout': 'left'}, {'input_path': PosixPath('/root/.paddlex/temp/tmplgnczrsf.png'), 'layout_bbox': [47.81724, 421.9041, 288.01566, 550.538], 'text': 'D, Ds, not only significantly reduces latency (35% faster),\nRut\nnproves accuracy (0.4% AP higher), CCFF is opti\nased on the cross-scale fusion module, which\nnsisting of convolutional lavers intc\npath.\nThe role of the fusion block is t\n into a new feature, and its\nFigure 5. The f\nblock contains tw\n1 x1\nchannels, /V RepBlock\n. anc\n: two-path outputs are fused by element-wise add. We\ntormulate the calculation ot the hvbrid encoder as:', 'layout': 'left'}, {'input_path': PosixPath('/root/.paddlex/temp/tmpsq0ey9md.png'), 'layout_bbox': [94.60716, 558.703, 288.04193, 600.19434], 'formula': '\\begin{array}{l}{{\\Theta=K=\\mathrm{p.s.sp{\\pm}}\\mathrm{i.s.s.}(\\mathrm{l.s.}(\\mathrm{l.s.}(\\mathrm{l.s.}}),{\\qquad\\mathrm{{a.s.}}\\mathrm{s.}}}\\\\ {{\\tau_{\\mathrm{{s.s.s.s.s.}}(\\mathrm{l.s.},\\mathrm{l.s.},\\mathrm{s.s.}}\\mathrm{s.}\\mathrm{s.}}\\end{array}),}}\\\\ {{\\bar{\\mathrm{e-c.c.s.s.}(\\mathrm{s.},\\mathrm{s.s.},\\ s_{s}}\\mathrm{s.s.},\\tau),}}\\end{array}', 'layout': 'left'}, {'input_path': PosixPath('/root/.paddlex/temp/tmpv30qy0v4.png'), 'layout_bbox': [47.975555, 607.12024, 288.5776, 629.1252], 'text': 'tened feature to the same shape as Ss.\nwhere Re shape represents restoring the shape of the flat-', 'layout': 'left'}, {'input_path': PosixPath('/root/.paddlex/temp/tmp0jejzwwv.png'), 'layout_bbox': [48.383354, 637.581, 245.96404, 648.20496], 'paragraph_title': '4.3. Uncertainty-minimal Query Selection', 'layout': 'left'}, {'input_path': PosixPath('/root/.paddlex/temp/tmpushex416.png'), 'layout_bbox': [47.80134, 656.002, 288.50192, 713.24994], 'text': 'To reduce the difficulty of optimizing object queries in\nDETR, several subsequent works [42, 44, 45] propose query\nselection schemes, which have in common that they use the\nconfidence score to select the top K’ features from the en-\ncoder to initialize object queries (or just position queries).', 'layout': 'left'}, {'input_path': PosixPath('/root/.paddlex/temp/tmpki7e_6wc.png'), 'layout_bbox': [306.6371, 302.1026, 546.3772, 419.76724], 'text': 'The confidence score represents the likelihood that the fea\nture includes foreground objects. Nevertheless, the \nare required to simultaneously model the category\nojects, both of which determine the quality of the\npertor\ncore of the fes\nBased on the analysis, the current query\n considerable level of uncertainty in the\nresulting in sub-optimal initialization for\nand hindering the performance of the detector.', 'layout': 'right'}, {'input_path': PosixPath('/root/.paddlex/temp/tmppbxrfehp.png'), 'layout_bbox': [306.0642, 422.7347, 546.9216, 539.45734], 'text': 'To address this problem, we propose the uncertainty mini\nmal query selection scheme, which explicitly const\noptim\n the epistemic uncertainty to model the\nfeatures, thereby providing \nhigh-quality\nr the decoder. Specifically,\n the discrepancy between i\nalization P\nand classificat\n.(2\ntunction for the gradie', 'layout': 'right'}, {'input_path': PosixPath('/root/.paddlex/temp/tmp1mgiyd21.png'), 'layout_bbox': [331.52808, 549.32635, 546.5229, 586.15546], 'formula': '\\begin{array}{c c c}{{}}&{{}}&{{\\begin{array}{c}{{i\\langle X\\rangle=({\\bar{Y}}({\\bar{X}})+{\\bar{Z}}({\\bar{X}})\\mid X\\in{\\bar{\\pi}}^{\\prime}}}&{{}}\\\\ {{}}&{{}}&{{}}\\end{array}}}&{{\\emptyset}}\\\\ {{}}&{{}}&{{C(\\bar{X},{\\bar{X}})=C..\\scriptstyle(\\bar{0},{\\bar{Y}})+{\\mathcal{L}}_{{\\mathrm{s}}}({\\bar{X}}),\\ 6)}}&{{}}\\end{array}', 'layout': 'right'}, {'input_path': PosixPath('/root/.paddlex/temp/tmp8t73dpym.png'), 'layout_bbox': [306.44016, 592.8762, 546.84314, 630.60126], 'text': 'where  and y denote the prediction and ground truth,\n= (c, b), c and b represent the category and bounding\nbox respectively, X represent the encoder feature.', 'layout': 'right'}, {'input_path': PosixPath('/root/.paddlex/temp/tmpftnxeyjm.png'), 'layout_bbox': [306.15652, 632.3142, 546.2463, 713.19073], 'text': 'Effectiveness analysis. To analyze the effectiveness of the\nuncertainty-minimal query selection, we visualize the clas-\nsificatior\nscores and IoU scores of the selected fe\nCOCO\na 12017, Figure 6. We draw the scatterplo\nt with\ndots\nrepresent the selected features from the model trained\nwith uncertainty-minimal query selection and vanilla query', 'layout': 'right'}]}
        ```

=== "公式识别"

    ```bash
    paddlex --pipeline formula_recognition --input https://paddle-model-ecology.bj.bcebos.com/paddlex/demo_image/general_formula_recognition.png --device gpu:0
    ```

    ??? question "查看运行结果"
        === "输出结果"
            ```bash
            {'input_path': '/root/.paddlex/predict_input/general_formula_recognition.png', 'layout_result': {'input_path': '/root/.paddlex/predict_input/general_formula_recognition.png', 'boxes': [{'cls_id': 3, 'label': 'number', 'score': 0.7580855488777161, 'coordinate': [1028.3635, 205.46213, 1038.953, 222.99033]}, {'cls_id': 0, 'label': 'paragraph_title', 'score': 0.8882032632827759, 'coordinate': [272.75305, 204.50894, 433.7473, 226.17996]}, {'cls_id': 2, 'label': 'text', 'score': 0.9685840606689453, 'coordinate': [272.75928, 282.17773, 1041.9316, 374.44687]}, {'cls_id': 2, 'label': 'text', 'score': 0.9559416770935059, 'coordinate': [272.39056, 385.54114, 1044.1521, 443.8598]}, {'cls_id': 2, 'label': 'text', 'score': 0.9610629081726074, 'coordinate': [272.40817, 467.2738, 1045.1033, 563.4855]}, {'cls_id': 7, 'label': 'formula', 'score': 0.8916195034980774, 'coordinate': [503.45743, 594.6236, 1040.6804, 619.73895]}, {'cls_id': 2, 'label': 'text', 'score': 0.973675549030304, 'coordinate': [272.32007, 648.8599, 1040.8702, 775.15686]}, {'cls_id': 7, 'label': 'formula', 'score': 0.9038916230201721, 'coordinate': [554.2307, 803.5825, 1040.4657, 855.3159]}, {'cls_id': 2, 'label': 'text', 'score': 0.9025381803512573, 'coordinate': [272.535, 875.1402, 573.1086, 898.3587]}, {'cls_id': 2, 'label': 'text', 'score': 0.8336610794067383, 'coordinate': [317.48013, 909.60864, 966.8498, 933.7868]}, {'cls_id': 2, 'label': 'text', 'score': 0.8779091238975525, 'coordinate': [19.704018, 653.322, 72.433235, 1215.1992]}, {'cls_id': 2, 'label': 'text', 'score': 0.8832409977912903, 'coordinate': [272.13028, 958.50806, 1039.7928, 1019.476]}, {'cls_id': 7, 'label': 'formula', 'score': 0.9088466167449951, 'coordinate': [517.1226, 1042.3978, 1040.2208, 1095.7457]}, {'cls_id': 2, 'label': 'text', 'score': 0.9587949514389038, 'coordinate': [272.03336, 1112.9269, 1041.0201, 1206.8417]}, {'cls_id': 2, 'label': 'text', 'score': 0.8885666131973267, 'coordinate': [271.7495, 1231.8752, 710.44495, 1255.7981]}, {'cls_id': 7, 'label': 'formula', 'score': 0.8907185196876526, 'coordinate': [581.2295, 1287.4525, 1039.8014, 1312.772]}, {'cls_id': 2, 'label': 'text', 'score': 0.9559596180915833, 'coordinate': [273.1827, 1341.421, 1041.0299, 1401.7255]}, {'cls_id': 2, 'label': 'text', 'score': 0.875311553478241, 'coordinate': [272.8338, 1427.3711, 789.7108, 1451.1359]}, {'cls_id': 7, 'label': 'formula', 'score': 0.9152213931083679, 'coordinate': [524.9582, 1474.8136, 1041.6333, 1530.7142]}, {'cls_id': 2, 'label': 'text', 'score': 0.9584835767745972, 'coordinate': [272.81665, 1549.524, 1042.9962, 1608.7157]}]}, 'ocr_result': {}, 'table_result': [], 'dt_polys': [array([[ 503.45743,  594.6236 ],
                [1040.6804 ,  594.6236 ],
                [1040.6804 ,  619.73895],
                [ 503.45743,  619.73895]], dtype=float32), array([[ 554.2307,  803.5825],
                [1040.4657,  803.5825],
                [1040.4657,  855.3159],
                [ 554.2307,  855.3159]], dtype=float32), array([[ 517.1226, 1042.3978],
                [1040.2208, 1042.3978],
                [1040.2208, 1095.7457],
                [ 517.1226, 1095.7457]], dtype=float32), array([[ 581.2295, 1287.4525],
                [1039.8014, 1287.4525],
                [1039.8014, 1312.772 ],
                [ 581.2295, 1312.772 ]], dtype=float32), array([[ 524.9582, 1474.8136],
                [1041.6333, 1474.8136],
                [1041.6333, 1530.7142],
                [ 524.9582, 1530.7142]], dtype=float32)], 'rec_formula': ['F({\bf x})=C(F_{1}(x_{1}),\cdot\cdot\cdot,F_{N}(x_{N})).\qquad\qquad\qquad(1)', 'p(\mathbf{x})=c(\mathbf{u})\prod_{i}p(x_{i}).\qquad\qquad\qquad\qquad\qquad\quad\quad~~\quad~~~~~~~~~~~~~~~(2)', 'H_{c}({\bf x})=-\int_{{\bf{u}}}c({\bf{u}})\log c({\bf{u}})d{\bf{u}}.~~~~~~~~~~~~~~~~~~~~~(3)', 'I({\bf x})=-H_{c}({\bf x}).\qquad\qquad\qquad\qquad(4)', 'H({\bf x})=\sum_{i}H(x_{i})+H_{c}({\bf x}).\eqno\qquad\qquad\qquad(5)']}
            ```

        === "可视化图片"

            <p><img src="https://raw.githubusercontent.com/cuicheng01/PaddleX_doc_images/main/images/pipelines/formula_recognition/02.jpg"></p>

=== "印章文本识别"

    ```bash
    paddlex --pipeline seal_recognition --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/seal_text_det.png --device gpu:0
    ```

    ??? question "查看运行结果"
        === "输出结果"
            ```bash
                {'input_path': PosixPath('/root/.paddlex/temp/tmpa8eqnpus.png'), 'layout_result': {'input_path': PosixPath('/root/.paddlex/temp/tmpa8eqnpus.png'), 'boxes': [{'cls_id': 2, 'label': 'seal', 'score': 0.9813321828842163, 'coordinate': [0, 5.1820183, 639.59314, 637.7533]}]}, 'ocr_result': {'dt_polys': [array([[166, 468],
                    [206, 503],
                [249, 523],
                [312, 535],
                [364, 529],
                [390, 521],
                [428, 505],
                [465, 476],
                [468, 474],
                [473, 474],
                [476, 475],
                [478, 477],
                [508, 507],
                [510, 510],
                [511, 514],
                [509, 518],
                [507, 521],
                [458, 559],
                [455, 560],
                [399, 584],
                [399, 584],
                [369, 591],
                [367, 592],
                [308, 597],
                [305, 596],
                [240, 584],
                [239, 584],
                [220, 577],
                [169, 552],
                [166, 551],
                [120, 510],
                [117, 507],
                [116, 503],
                [117, 499],
                [121, 495],
                [153, 468],
                [156, 467],
                [161, 467]]), array([[439, 444],
                [443, 444],
                [446, 446],
                [448, 448],
                [450, 451],
                [450, 454],
                [448, 498],
                [448, 502],
                [445, 505],
                [442, 507],
                [439, 507],
                [399, 505],
                [196, 506],
                [192, 505],
                [189, 503],
                [187, 500],
                [187, 497],
                [186, 458],
                [186, 456],
                [187, 451],
                [188, 448],
                [192, 444],
                [194, 444],
                [198, 443]]), array([[463, 347],
                [468, 347],
                [472, 350],
                [474, 353],
                [476, 360],
                [477, 425],
                [476, 429],
                [474, 433],
                [470, 436],
                [466, 438],
                [463, 438],
                [175, 439],
                [170, 438],
                [166, 435],
                [163, 432],
                [161, 426],
                [161, 361],
                [161, 356],
                [163, 352],
                [167, 349],
                [172, 347],
                [184, 346],
                [186, 346]]), array([[325,  38],
                [485,  91],
                [489,  94],
                [493,  96],
                [587, 225],
                [588, 230],
                [589, 234],
                [592, 384],
                [591, 389],
                [588, 393],
                [585, 397],
                [581, 399],
                [576, 399],
                [572, 398],
                [508, 380],
                [503, 379],
                [499, 375],
                [498, 370],
                [497, 367],
                [493, 258],
                [428, 171],
                [421, 165],
                [323, 136],
                [225, 165],
                [207, 175],
                [144, 260],
                [141, 365],
                [141, 370],
                [138, 374],
                [134, 378],
                [131, 379],
                [ 66, 398],
                [ 61, 398],
                [ 56, 398],
                [ 52, 395],
                [ 48, 391],
                [ 47, 386],
                [ 47, 384],
                [ 47, 235],
                [ 48, 230],
                [ 50, 226],
                [146,  96],
                [151,  92],
                [154,  91],
                [315,  38],
                [320,  37]])], 'dt_scores': [0.99375725701319, 0.9871711582010613, 0.9937523531067023, 0.9911629231838204], 'rec_text': ['5263647368706', '吗繁物', '发票专天津君和缘商贸有限公司'], 'rec_score': [0.9933745265007019, 0.998288631439209, 0.9999362230300903, 0.9923253655433655], 'input_path': PosixPath('/Users/chenghong0temp/tmpa8eqnpus.png')}, 'src_file_name': 'https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/seal_text_det.png', 'page_id': 0}                
                ```

        === "可视化图片"

            <p><img src="https://raw.githubusercontent.com/cuicheng01/PaddleX_doc_images/main/images/pipelines/seal_recognition/03.png"></p>

!!! example "计算机视觉相关产线命令行使用"

=== "通用图像分类"

    ```bash
    paddlex --pipeline image_classification --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/general_image_classification_001.jpg --device gpu:0
    ```

    ??? question "查看运行结果"
        === "输出结果"
            ```bash
            {'input_path': '/root/.paddlex/predict_input/general_image_classification_001.jpg', 'class_ids': [296, 170, 356, 258, 248], 'scores': [0.62736, 0.03752, 0.03256, 0.0323, 0.03194], 'label_names': ['ice bear, polar bear, Ursus Maritimus, Thalarctos maritimus', 'Irish wolfhound', 'weasel', 'Samoyed, Samoyede', 'Eskimo dog, husky']}
            ```

        === "可视化图片"

            <p><img src="https://raw.githubusercontent.com/cuicheng01/PaddleX_doc_images/main/images/pipelines/image_classification/03.png"></p>

=== "通用目标检测"

    ```bash
    paddlex --pipeline object_detection --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/general_object_detection_002.png --device gpu:0
    ```
    ??? question "查看运行结果"
        === "输出结果"
            ```bash
            {'input_path': '/root/.paddlex/predict_input/general_object_detection_002.png', 'boxes': [{'cls_id': 49, 'label': 'orange', 'score': 0.8188097476959229, 'coordinate': [661, 93, 870, 305]}, {'cls_id': 47, 'label': 'apple', 'score': 0.7743489146232605, 'coordinate': [76, 274, 330, 520]}, {'cls_id': 47, 'label': 'apple', 'score': 0.7270504236221313, 'coordinate': [285, 94, 469, 297]}, {'cls_id': 46, 'label': 'banana', 'score': 0.5570532083511353, 'coordinate': [310, 361, 685, 712]}, {'cls_id': 47, 'label': 'apple', 'score': 0.5484835505485535, 'coordinate': [764, 285, 924, 440]}, {'cls_id': 47, 'label': 'apple', 'score': 0.5160726308822632, 'coordinate': [853, 169, 987, 303]}, {'cls_id': 60, 'label': 'dining table', 'score': 0.5142655968666077, 'coordinate': [0, 0, 1072, 720]}, {'cls_id': 47, 'label': 'apple', 'score': 0.5101479291915894, 'coordinate': [57, 23, 213, 176]}]}
            ```

        === "可视化图片"

            <p><img src="https://raw.githubusercontent.com/cuicheng01/PaddleX_doc_images/main/images/pipelines/object_detection/03.png"></p>

=== "通用实例分割"

    ```bash
    paddlex --pipeline instance_segmentation --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/general_instance_segmentation_004.png --device gpu:0
    ```

    ??? question "查看运行结果"
        === "输出结果"
            ```bash
            {'input_path': '/root/.paddlex/predict_input/general_instance_segmentation_004.png', 'boxes': [{'cls_id': 0, 'label': 'person', 'score': 0.8698326945304871, 'coordinate': [339, 0, 639, 575]}, {'cls_id': 0, 'label': 'person', 'score': 0.8571141362190247, 'coordinate': [0, 0, 195, 575]}, {'cls_id': 0, 'label': 'person', 'score': 0.8202633857727051, 'coordinate': [88, 113, 401, 574]}, {'cls_id': 0, 'label': 'person', 'score': 0.7108577489852905, 'coordinate': [522, 21, 767, 574]}, {'cls_id': 27, 'label': 'tie', 'score': 0.554280698299408, 'coordinate': [247, 311, 355, 574]}]}
            ```

        === "可视化图片"

            <p><img src="https://raw.githubusercontent.com/cuicheng01/PaddleX_doc_images/main/images/pipelines/instance_segmentation/03.png"></p>

=== "通用语义分割"

    ```bash
    paddlex --pipeline semantic_segmentation --input https://paddle-model-ecology.bj.bcebos.com/paddlex/PaddleX3.0/application/semantic_segmentation/makassaridn-road_demo.png --device gpu:0
    ```

    ??? question "查看运行结果"
        === "输出结果"
            ```bash
            {'input_path': '/root/.paddlex/predict_input/makassaridn-road_demo.png', 'pred': '...'}
            ```

        === "可视化图片"

            <p><img src="https://raw.githubusercontent.com/cuicheng01/PaddleX_doc_images/main/images/pipelines/semantic_segmentation/03.png"></p>

=== "图像多标签分类"

    ```bash
    paddlex --pipeline multi_label_image_classification --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/general_image_classification_001.jpg --device gpu:0
    ```

    ??? question "查看运行结果"
        === "输出结果"
            ```bash
            {'input_path': '/root/.paddlex/predict_input/general_image_classification_001.jpg', 'class_ids': [21, 0, 30, 24], 'scores': [0.99257, 0.70596, 0.63001, 0.57852], 'label_names': ['bear', 'person', 'skis', 'backpack']}
            ```

        === "可视化图片"

            <p><img src="https://raw.githubusercontent.com/cuicheng01/PaddleX_doc_images/main/images/pipelines/image_multi_label_classification/02.png"></p>

=== "小目标检测"

    ```bash
    paddlex --pipeline small_object_detection --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/small_object_detection.jpg --device gpu:0
    ```

    ??? question "查看运行结果"
        === "输出结果"
            ```bash
            {'input_path': '/root/.paddlex/predict_input/small_object_detection.jpg', 'boxes': [{'cls_id': 3, 'label': 'car', 'score': 0.9243856072425842, 'coordinate': [624, 638, 682, 741]}, {'cls_id': 3, 'label': 'car', 'score': 0.9206348061561584, 'coordinate': [242, 561, 356, 613]}, {'cls_id': 3, 'label': 'car', 'score': 0.9194547533988953, 'coordinate': [670, 367, 705, 400]}, {'cls_id': 3, 'label': 'car', 'score': 0.9162291288375854, 'coordinate': [459, 259, 523, 283]}, {'cls_id': 4, 'label': 'van', 'score': 0.9075379371643066, 'coordinate': [467, 213, 498, 242]}, {'cls_id': 4, 'label': 'van', 'score': 0.9066920876502991, 'coordinate': [547, 351, 577, 397]}, {'cls_id': 3, 'label': 'car', 'score': 0.9041045308113098, 'coordinate': [502, 632, 562, 736]}, {'cls_id': 3, 'label': 'car', 'score': 0.8934890627861023, 'coordinate': [613, 383, 647, 427]}, {'cls_id': 3, 'label': 'car', 'score': 0.8803309202194214, 'coordinate': [640, 280, 671, 309]}, {'cls_id': 3, 'label': 'car', 'score': 0.8727016448974609, 'coordinate': [1199, 256, 1259, 281]}, {'cls_id': 3, 'label': 'car', 'score': 0.8705748915672302, 'coordinate': [534, 410, 570, 461]}, {'cls_id': 3, 'label': 'car', 'score': 0.8654043078422546, 'coordinate': [669, 248, 702, 271]}, {'cls_id': 3, 'label': 'car', 'score': 0.8555219769477844, 'coordinate': [525, 243, 550, 270]}, {'cls_id': 3, 'label': 'car', 'score': 0.8522038459777832, 'coordinate': [526, 220, 553, 243]}, {'cls_id': 3, 'label': 'car', 'score': 0.8392605185508728, 'coordinate': [557, 141, 575, 158]}, {'cls_id': 3, 'label': 'car', 'score': 0.8353804349899292, 'coordinate': [537, 120, 553, 133]}, {'cls_id': 3, 'label': 'car', 'score': 0.8322211503982544, 'coordinate': [585, 132, 603, 147]}, {'cls_id': 3, 'label': 'car', 'score': 0.8298957943916321, 'coordinate': [701, 283, 736, 313]}, {'cls_id': 3, 'label': 'car', 'score': 0.8217393159866333, 'coordinate': [885, 347, 943, 377]}, {'cls_id': 3, 'label': 'car', 'score': 0.820313572883606, 'coordinate': [493, 150, 511, 168]}, {'cls_id': 0, 'label': 'pedestrian', 'score': 0.8183429837226868, 'coordinate': [203, 701, 224, 743]}, {'cls_id': 0, 'label': 'pedestrian', 'score': 0.815082848072052, 'coordinate': [185, 710, 201, 744]}, {'cls_id': 6, 'label': 'tricycle', 'score': 0.7892289757728577, 'coordinate': [311, 371, 344, 407]}, {'cls_id': 6, 'label': 'tricycle', 'score': 0.7812919020652771, 'coordinate': [345, 380, 388, 405]}, {'cls_id': 0, 'label': 'pedestrian', 'score': 0.7748346328735352, 'coordinate': [295, 500, 309, 532]}, {'cls_id': 0, 'label': 'pedestrian', 'score': 0.7688500285148621, 'coordinate': [851, 436, 863, 466]}, {'cls_id': 3, 'label': 'car', 'score': 0.7466475367546082, 'coordinate': [565, 114, 580, 128]}, {'cls_id': 3, 'label': 'car', 'score': 0.7156463265419006, 'coordinate': [483, 66, 495, 78]}, {'cls_id': 3, 'label': 'car', 'score': 0.704211950302124, 'coordinate': [607, 138, 642, 152]}, {'cls_id': 3, 'label': 'car', 'score': 0.7021926045417786, 'coordinate': [505, 72, 518, 83]}, {'cls_id': 0, 'label': 'pedestrian', 'score': 0.6897469162940979, 'coordinate': [802, 460, 815, 488]}, {'cls_id': 3, 'label': 'car', 'score': 0.671891450881958, 'coordinate': [574, 123, 593, 136]}, {'cls_id': 9, 'label': 'motorcycle', 'score': 0.6712754368782043, 'coordinate': [445, 317, 472, 334]}, {'cls_id': 0, 'label': 'pedestrian', 'score': 0.6695684790611267, 'coordinate': [479, 309, 489, 332]}, {'cls_id': 3, 'label': 'car', 'score': 0.6273623704910278, 'coordinate': [654, 210, 677, 234]}, {'cls_id': 3, 'label': 'car', 'score': 0.6070230603218079, 'coordinate': [640, 166, 667, 185]}, {'cls_id': 3, 'label': 'car', 'score': 0.6064521670341492, 'coordinate': [461, 59, 476, 71]}, {'cls_id': 3, 'label': 'car', 'score': 0.5860581398010254, 'coordinate': [464, 87, 484, 100]}, {'cls_id': 9, 'label': 'motorcycle', 'score': 0.5792551636695862, 'coordinate': [390, 390, 419, 408]}, {'cls_id': 3, 'label': 'car', 'score': 0.5559225678443909, 'coordinate': [481, 125, 496, 140]}, {'cls_id': 0, 'label': 'pedestrian', 'score': 0.5531904697418213, 'coordinate': [869, 306, 880, 331]}, {'cls_id': 0, 'label': 'pedestrian', 'score': 0.5468509793281555, 'coordinate': [895, 294, 904, 319]}, {'cls_id': 3, 'label': 'car', 'score': 0.5451828241348267, 'coordinate': [505, 94, 518, 108]}, {'cls_id': 3, 'label': 'car', 'score': 0.5398445725440979, 'coordinate': [657, 188, 681, 208]}, {'cls_id': 4, 'label': 'van', 'score': 0.5318890810012817, 'coordinate': [518, 88, 534, 102]}, {'cls_id': 3, 'label': 'car', 'score': 0.5296525359153748, 'coordinate': [527, 71, 540, 81]}, {'cls_id': 6, 'label': 'tricycle', 'score': 0.5168400406837463, 'coordinate': [528, 320, 563, 346]}, {'cls_id': 3, 'label': 'car', 'score': 0.5088561177253723, 'coordinate': [511, 84, 530, 95]}, {'cls_id': 0, 'label': 'pedestrian', 'score': 0.502006471157074, 'coordinate': [841, 266, 850, 283]}]}
            ```

        === "可视化图片"

            <p><img src="https://raw.githubusercontent.com/cuicheng01/PaddleX_doc_images/main/images/pipelines/small_object_detection/02.png"></p>

=== "图像异常检测"

    ```bash
    paddlex --pipeline anomaly_detection --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/uad_grid.png --device gpu:0
    ```

    ??? question "查看运行结果"
        === "输出结果"
            ```bash
            {'input_path': '/root/.paddlex/predict_input/uad_grid.png', 'pred': '...'}
            ```

        === "可视化图片"

            <p><img src="https://raw.githubusercontent.com/cuicheng01/PaddleX_doc_images/main/images/pipelines/image_anomaly_detection/02.png"></p>

!!! example "时序分析相关产线命令行使用"

=== "时序预测"

    ```bash
    paddlex --pipeline ts_fc --input https://paddle-model-ecology.bj.bcebos.com/paddlex/ts/demo_ts/ts_fc.csv --device gpu:0
    ```

    ??? question "查看运行结果"
        ```bash
        {'input_path': 'ts_fc.csv', 'forecast':                            OT
        date
        2018-06-26 20:00:00  9.586131
        2018-06-26 21:00:00  9.379762
        2018-06-26 22:00:00  9.252275
        2018-06-26 23:00:00  9.249993
        2018-06-27 00:00:00  9.164998
        ...                       ...
        2018-06-30 15:00:00  8.830340
        2018-06-30 16:00:00  9.291553
        2018-06-30 17:00:00  9.097666
        2018-06-30 18:00:00  8.905430
        2018-06-30 19:00:00  8.993793

        [96 rows x 1 columns]}
        ```

=== "时序异常检测"

    ```bash
    paddlex --pipeline ts_ad --input https://paddle-model-ecology.bj.bcebos.com/paddlex/ts/demo_ts/ts_ad.csv --device gpu:0
    ```

    ??? question "查看运行结果"
        ```bash
        {'input_path': 'ts_ad.csv', 'anomaly':            label
        timestamp
        220226         0
        220227         0
        220228         0
        220229         0
        220230         0
        ...          ...
        220317         1
        220318         1
        220319         1
        220320         1
        220321         0

        [96 rows x 1 columns]}
        ```

=== "时序分类"

    ```bash
    paddlex --pipeline ts_cls --input https://paddle-model-ecology.bj.bcebos.com/paddlex/ts/demo_ts/ts_cls.csv --device gpu:0
    ```

    ??? question "查看运行结果"
        ```bash
        {'input_path': 'ts_cls.csv', 'classification':         classid     score
        sample
        0             0  0.617688}
        ```

📝 Python 脚本使用

几行代码即可完成产线的快速推理,统一的 Python 脚本格式如下:

from paddlex import create_pipeline

pipeline = create_pipeline(pipeline=[产线名称])
output = pipeline.predict([输入图片名称])
for res in output:
    res.print()
    res.save_to_img("./output/")
    res.save_to_json("./output/")

执行了如下几个步骤:

  • create_pipeline() 实例化产线对象
  • 传入图片并调用产线对象的 predict 方法进行推理预测
  • 对预测结果进行处理

!!! example "OCR相关产线Python脚本使用"

=== "通用OCR"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="OCR")

    output = pipeline.predict("general_ocr_002.png")
    for res in output:
        res.print()
        res.save_to_img("./output/")
    ```

=== "通用表格识别"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="table_recognition")

    output = pipeline.predict("table_recognition.jpg")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_img("./output/") ## 保存img格式结果
        res.save_to_xlsx("./output/") ## 保存表格格式结果
        res.save_to_html("./output/") ## 保存html结果
    ```

=== "通用版面解析"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="layout_parsing")

    output = pipeline.predict("demo_paper.png")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_img("./output/") ## 保存img格式结果
        res.save_to_xlsx("./output/") ## 保存表格格式结果
        res.save_to_html("./output/") ## 保存html结果
    ```

=== "公式识别"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="formula_recognition")

    output = pipeline.predict("general_formula_recognition.png")
    for res in output:
        res.print()
    ```

=== "印章文本识别"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="seal_recognition")

    output = pipeline.predict("seal_text_det.png")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_img("./output/") ## 保存可视化结果
    ```

!!! example "计算机视觉相关产线Python脚本使用"

=== "通用图像分类"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="image_classification")

    output = pipeline.predict("general_image_classification_001.jpg")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_img("./output/") ## 保存结果可视化图像
        res.save_to_json("./output/") ## 保存预测的结构化输出
    ```

=== "通用目标检测"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="object_detection")

    output = pipeline.predict("general_object_detection_002.png")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_img("./output/") ## 保存结果可视化图像
        res.save_to_json("./output/") ## 保存预测的结构化输出
    ```

=== "通用实例分割"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="instance_segmentation")

    output = pipeline.predict("general_instance_segmentation_004.png")
    for res in output:
        res.print() # 打印预测的结构化输出
        res.save_to_img("./output/") # 保存结果可视化图像
        res.save_to_json("./output/") # 保存预测的结构化输出
    ```

=== "通用语义分割"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="semantic_segmentation")

    output = pipeline.predict("makassaridn-road_demo.png")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_img("./output/") ## 保存结果可视化图像
        res.save_to_json("./output/") ## 保存预测的结构化输出
    ```

=== "图像多标签分类"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="multi_label_image_classification")

    output = pipeline.predict("general_image_classification_001.jpg")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_img("./output/") ## 保存结果可视化图像
        res.save_to_json("./output/") ## 保存预测的结构化输出
    ```

=== "小目标检测"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="small_object_detection")

    output = pipeline.predict("small_object_detection.jpg")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_img("./output/") ## 保存结果可视化图像
        res.save_to_json("./output/") ## 保存预测的结构化输出
    ```

=== "图像异常检测"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="anomaly_detection")

    output = pipeline.predict("uad_grid.png")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_img("./output/") ## 保存结果可视化图像
        res.save_to_json("./output/") ## 保存预测的结构化输出
    ```

!!! example "时序分析相关产线Python脚本使用"

=== "时序预测"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="ts_fc")

    output = pipeline.predict("ts_fc.csv")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_csv("./output/") ## 保存csv格式结果
    ```

=== "时序异常检测"

    ```python
    from paddlex import create_pipeline
    pipeline = create_pipeline(pipeline="./my_path/ts_ad.yaml")
    output = pipeline.predict("ts_ad.cs")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_csv("./output/") ## 保存csv格式结果
    ```

=== "时序分类"

    ```python
    from paddlex import create_pipeline

    pipeline = create_pipeline(pipeline="ts_cls")

    output = pipeline.predict("ts_cls.csv")
    for res in output:
        res.print() ## 打印预测的结构化输出
        res.save_to_csv("./output/") ## 保存csv格式结果
    ```

🚀 详细教程

- **文档信息抽取** --- 文档场景信息抽取v3(PP-ChatOCRv3)是飞桨特色的文档和图像智能分析解决方案,结合了 LLM 和 OCR 技术,一站式解决版面分析、生僻字、多页 pdf、表格、印章识别等常见的复杂文档信息抽取难点问题。 [:octicons-arrow-right-24: 教程](pipeline_usage/tutorials/information_extraction_pipelines/document_scene_information_extraction.md) - **通用OCR** --- 通用 OCR 产线用于解决文字识别任务,提取图片中的文字信息并以文本形式输出,基于端到端 OCR 串联系统,可实现 CPU 上毫秒级的文本内容精准预测,在通用场景上达到开源SOTA。 [:octicons-arrow-right-24: 教程](pipeline_usage/tutorials/ocr_pipelines/OCR.md) - **通用图像分类** --- 图像分类能够自动提取图像特征并进行准确分类,可以识别各种物体,如动物、植物、交通标志等,广泛应用于物体识别、场景理解和自动标注等领域。 [:octicons-arrow-right-24: 教程](pipeline_usage/tutorials/cv_pipelines/image_classification.md) - **通用目标检测** --- 目标检测旨在识别图像或视频中多个对象的类别及其位置,通过生成边界框来标记这些对象。该技术广泛应用于自动驾驶、监控系统和智能相册等领域。 [:octicons-arrow-right-24: 教程](pipeline_usage/tutorials/cv_pipelines/object_detection.md) - **小目标检测** --- 小目标检测是一种专门识别图像中体积较小物体的技术,广泛应用于监控、无人驾驶和卫星图像分析等领域。它能够从复杂场景中准确找到并分类像行人、交通标志或小动物等小尺寸物体。 [:octicons-arrow-right-24: 教程](pipeline_usage/tutorials/cv_pipelines/small_object_detection.md) - **时序预测** --- 时序预测是一种利用历史数据来预测未来趋势的技术,通过分析时间序列数据的变化模式。广泛应用于金融市场、天气预报和销售预测等领域。 [:octicons-arrow-right-24: 教程](pipeline_usage/tutorials/time_series_pipelines/time_series_forecasting.md)

:octicons-arrow-right-24: 更多

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