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PaddleX Model List (Hygon DCU)
PaddleX incorporates multiple pipelines, each containing several modules, and each module encompasses various models. The specific models to use can be selected based on the benchmark data below. If you prioritize model accuracy, choose models with higher accuracy. If you prioritize model storage size, select models with smaller storage sizes.
Image Classification Module
Note: The above accuracy metrics are Top-1 Accuracy on the ImageNet-1k validation set.
Note: The above accuracy metrics are for the multi-label classification task mAP of COCO2017.
Note: The above accuracy metrics are for AliProducts recall@1。
Object Detection Module
Note: The above accuracy metrics are mAP(0.5:0.95) on the COCO2017 validation set.
Note: The above accuracy metrics are for VisDrone-DET validation set mAP(0.5:0.95)。
Note: The above accuracy metrics are mIoU on the Cityscapes dataset.
Note: The above accuracy metrics are evaluated on the MVTec AD dataset using the average anomaly score.
| Model Name |
AP (%) Easy/Medium/Hard |
Model Storage Size (MB) |
Model Download Link |
| PicoDet_LCNet_x2_5_face |
93.7/90.7/68.1 |
28.9 |
Inference Model/Training Model |
Note: The above accuracy metrics are evaluated on the WIDER-FACE validation set with an input size of 640*640.
Text Detection Module
Note: The evaluation set for the above accuracy metrics is PaddleOCR's self-built Chinese dataset, covering street scenes, web images, documents, handwriting, and more scenarios, with 500 images for detection.
Text Recognition Module
Note: The evaluation set for the above accuracy metrics is PaddleOCR's self-built Chinese dataset, covering street scenes, web images, documents, handwriting, and more scenarios, with 11,000 images for text recognition.
Note: The above accuracy metrics are measured on the ETTH1 dataset (evaluation results on the test set test.csv).