classifier.py 26 KB

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  1. # Copyright (c) 2021 PaddlePaddle Authors. All Rights Reserved.
  2. #
  3. # Licensed under the Apache License, Version 2.0 (the "License");
  4. # you may not use this file except in compliance with the License.
  5. # You may obtain a copy of the License at
  6. #
  7. # http://www.apache.org/licenses/LICENSE-2.0
  8. #
  9. # Unless required by applicable law or agreed to in writing, software
  10. # distributed under the License is distributed on an "AS IS" BASIS,
  11. # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  12. # See the License for the specific language governing permissions and
  13. # limitations under the License.
  14. from __future__ import absolute_import
  15. import math
  16. import os.path as osp
  17. from collections import OrderedDict
  18. import numpy as np
  19. import paddle
  20. from paddle import to_tensor
  21. import paddle.nn.functional as F
  22. from paddle.static import InputSpec
  23. from paddlex.utils import logging, TrainingStats, DisablePrint
  24. from paddlex.cv.models.base import BaseModel
  25. from paddlex.cv.transforms import arrange_transforms
  26. with DisablePrint():
  27. from PaddleClas.ppcls.modeling import architectures
  28. from PaddleClas.ppcls.modeling.loss import CELoss
  29. __all__ = [
  30. "ResNet18", "ResNet34", "ResNet50", "ResNet101", "ResNet152",
  31. "ResNet18_vd", "ResNet34_vd", "ResNet50_vd", "ResNet50_vd_ssld",
  32. "ResNet101_vd", "ResNet101_vd_ssld", "ResNet152_vd", "ResNet200_vd",
  33. "AlexNet", "DarkNet53", "MobileNetV1", "MobileNetV2", "MobileNetV3_small",
  34. "MobileNetV3_small_ssld", "MobileNetV3_large", "MobileNetV3_large_ssld",
  35. "DenseNet121", "DenseNet161", "DenseNet169", "DenseNet201", "DenseNet264",
  36. "HRNet_W18_C", "HRNet_W30_C", "HRNet_W32_C", "HRNet_W40_C", "HRNet_W44_C",
  37. "HRNet_W48_C", "HRNet_W64_C", "Xception41", "Xception65", "Xception71",
  38. "ShuffleNetV2", "ShuffleNetV2_swish"
  39. ]
  40. class BaseClassifier(BaseModel):
  41. """Parent class of all classification models.
  42. Args:
  43. model_name (str, optional): Name of classification model. Defaults to 'ResNet50'.
  44. num_classes (int, optional): The number of target classes. Defaults to 1000.
  45. """
  46. def __init__(self, model_name='ResNet50', num_classes=1000, **params):
  47. self.init_params = locals()
  48. self.init_params.update(params)
  49. del self.init_params['params']
  50. super(BaseClassifier, self).__init__('classifier')
  51. if not hasattr(architectures, model_name):
  52. raise Exception("ERROR: There's no model named {}.".format(
  53. model_name))
  54. self.model_name = model_name
  55. self.labels = None
  56. self.num_classes = num_classes
  57. for k, v in params.items():
  58. setattr(self, k, v)
  59. self.net = self.build_net(**params)
  60. def build_net(self, **params):
  61. with paddle.utils.unique_name.guard():
  62. net = architectures.__dict__[self.model_name.strip('_ssld')](
  63. class_dim=self.num_classes, **params)
  64. return net
  65. def get_test_inputs(self, image_shape):
  66. input_spec = [
  67. InputSpec(
  68. shape=[None, 3] + image_shape, name='image', dtype='float32')
  69. ]
  70. return input_spec
  71. def run(self, net, inputs, mode):
  72. net_out = net(inputs[0])
  73. softmax_out = F.softmax(net_out)
  74. if mode == 'test':
  75. outputs = OrderedDict([('prediction', softmax_out)])
  76. elif mode == 'eval':
  77. labels = to_tensor(inputs[1].numpy().astype('int64').reshape(-1,
  78. 1))
  79. acc1 = paddle.metric.accuracy(softmax_out, label=labels)
  80. k = min(5, self.num_classes)
  81. acck = paddle.metric.accuracy(softmax_out, label=labels, k=k)
  82. # multi cards eval
  83. if paddle.distributed.get_world_size() > 1:
  84. acc1 = paddle.distributed.all_reduce(
  85. acc1, op=paddle.distributed.ReduceOp.
  86. SUM) / paddle.distributed.get_world_size()
  87. acck = paddle.distributed.all_reduce(
  88. acck, op=paddle.distributed.ReduceOp.
  89. SUM) / paddle.distributed.get_world_size()
  90. outputs = OrderedDict([('acc1', acc1), ('acc{}'.format(k), acck),
  91. ('prediction', softmax_out)])
  92. else:
  93. # mode == 'train'
  94. labels = to_tensor(inputs[1].numpy().astype('int64').reshape(-1,
  95. 1))
  96. loss = CELoss(class_dim=self.num_classes)
  97. loss = loss(net_out, inputs[1])
  98. acc1 = paddle.metric.accuracy(softmax_out, label=labels, k=1)
  99. k = min(5, self.num_classes)
  100. acck = paddle.metric.accuracy(softmax_out, label=labels, k=k)
  101. outputs = OrderedDict([('loss', loss), ('acc1', acc1),
  102. ('acc{}'.format(k), acck)])
  103. return outputs
  104. def default_optimizer(self, parameters, learning_rate, warmup_steps,
  105. warmup_start_lr, lr_decay_epochs, lr_decay_gamma,
  106. num_steps_each_epoch):
  107. boundaries = [b * num_steps_each_epoch for b in lr_decay_epochs]
  108. values = [
  109. learning_rate * (lr_decay_gamma**i)
  110. for i in range(len(lr_decay_epochs) + 1)
  111. ]
  112. scheduler = paddle.optimizer.lr.PiecewiseDecay(boundaries, values)
  113. if warmup_steps > 0:
  114. if warmup_steps > lr_decay_epochs[0] * num_steps_each_epoch:
  115. logging.error(
  116. "In function train(), parameters should satisfy: "
  117. "warmup_steps <= lr_decay_epochs[0]*num_samples_in_train_dataset",
  118. exit=False)
  119. logging.error(
  120. "See this doc for more information: "
  121. "https://github.com/PaddlePaddle/PaddleX/blob/develop/docs/appendix/parameters.md#notice",
  122. exit=False)
  123. logging.error(
  124. "warmup_steps should less than {} or lr_decay_epochs[0] greater than {}, "
  125. "please modify 'lr_decay_epochs' or 'warmup_steps' in train function".
  126. format(lr_decay_epochs[0] * num_steps_each_epoch,
  127. warmup_steps // num_steps_each_epoch))
  128. scheduler = paddle.optimizer.lr.LinearWarmup(
  129. learning_rate=scheduler,
  130. warmup_steps=warmup_steps,
  131. start_lr=warmup_start_lr,
  132. end_lr=learning_rate)
  133. optimizer = paddle.optimizer.Momentum(
  134. scheduler,
  135. momentum=.9,
  136. weight_decay=paddle.regularizer.L2Decay(coeff=1e-04),
  137. parameters=parameters)
  138. return optimizer
  139. def train(self,
  140. num_epochs,
  141. train_dataset,
  142. train_batch_size=64,
  143. eval_dataset=None,
  144. optimizer=None,
  145. save_interval_epochs=1,
  146. log_interval_steps=10,
  147. save_dir='output',
  148. pretrain_weights='IMAGENET',
  149. learning_rate=.025,
  150. warmup_steps=0,
  151. warmup_start_lr=0.0,
  152. lr_decay_epochs=(30, 60, 90),
  153. lr_decay_gamma=0.1,
  154. early_stop=False,
  155. early_stop_patience=5,
  156. use_vdl=True):
  157. """
  158. Train the model.
  159. Args:
  160. num_epochs(int): The number of epochs.
  161. train_dataset(paddlex.dataset): Training dataset.
  162. train_batch_size(int, optional): Total batch size among all cards used in training. Defaults to 64.
  163. eval_dataset(paddlex.dataset, optional):
  164. Evaluation dataset. If None, the model will not be evaluated during training process. Defaults to None.
  165. optimizer(paddle.optimizer.Optimizer or None, optional):
  166. Optimizer used for training. If None, a default optimizer is used. Defaults to None.
  167. save_interval_epochs(int, optional): Epoch interval for saving the model. Defaults to 1.
  168. log_interval_steps(int, optional): Step interval for printing training information. Defaults to 10.
  169. save_dir(str, optional): Directory to save the model. Defaults to 'output'.
  170. pretrain_weights(str or None, optional):
  171. None or name/path of pretrained weights. If None, no pretrained weights will be loaded. Defaults to 'IMAGENET'.
  172. learning_rate(float, optional): Learning rate for training. Defaults to .025.
  173. warmup_steps(int, optional): The number of steps of warm-up training. Defaults to 0.
  174. warmup_start_lr(float, optional): Start learning rate of warm-up training. Defaults to 0..
  175. lr_decay_epochs(List[int] or Tuple[int], optional):
  176. Epoch milestones for learning rate decay. Defaults to (20, 60, 90).
  177. lr_decay_gamma(float, optional): Gamma coefficient of learning rate decay, default .1.
  178. early_stop(bool, optional): Whether to adopt early stop strategy. Defaults to False.
  179. early_stop_patience(int, optional): Early stop patience. Defaults to 5.
  180. use_vdl(bool, optional): Whether to use VisualDL to monitor the training process. Defaults to True.
  181. """
  182. self.labels = train_dataset.labels
  183. # build optimizer if not defined
  184. if optimizer is None:
  185. num_steps_each_epoch = len(train_dataset) // train_batch_size
  186. self.optimizer = self.default_optimizer(
  187. parameters=self.net.parameters(),
  188. learning_rate=learning_rate,
  189. warmup_steps=warmup_steps,
  190. warmup_start_lr=warmup_start_lr,
  191. lr_decay_epochs=lr_decay_epochs,
  192. lr_decay_gamma=lr_decay_gamma,
  193. num_steps_each_epoch=num_steps_each_epoch)
  194. else:
  195. self.optimizer = optimizer
  196. # initiate weights
  197. if pretrain_weights is not None and not osp.exists(pretrain_weights):
  198. if pretrain_weights not in ['IMAGENET']:
  199. logging.warning(
  200. "Path of pretrain_weights('{}') does not exist!".format(
  201. pretrain_weights))
  202. logging.warning(
  203. "Pretrain_weights is forcibly set to 'IMAGENET'. "
  204. "If don't want to use pretrain weights, "
  205. "set pretrain_weights to be None.")
  206. pretrain_weights = 'IMAGENET'
  207. pretrained_dir = osp.join(save_dir, 'pretrain')
  208. self.net_initialize(
  209. pretrain_weights=pretrain_weights, save_dir=pretrained_dir)
  210. # start train loop
  211. self.train_loop(
  212. num_epochs=num_epochs,
  213. train_dataset=train_dataset,
  214. train_batch_size=train_batch_size,
  215. eval_dataset=eval_dataset,
  216. save_interval_epochs=save_interval_epochs,
  217. log_interval_steps=log_interval_steps,
  218. save_dir=save_dir,
  219. early_stop=early_stop,
  220. early_stop_patience=early_stop_patience,
  221. use_vdl=use_vdl)
  222. def evaluate(self, eval_dataset, batch_size=1, return_details=False):
  223. """
  224. Evaluate the model.
  225. Args:
  226. eval_dataset(paddlex.dataset): Evaluation dataset.
  227. batch_size(int, optional): Total batch size among all cards used for evaluation. Defaults to 1.
  228. return_details(bool, optional): Whether to return evaluation details. Defaults to False.
  229. Returns:
  230. collections.OrderedDict with key-value pairs: {"acc1": `top 1 accuracy`, "acc5": `top 5 accuracy`}.
  231. """
  232. # 给transform添加arrange操作
  233. arrange_transforms(
  234. model_type=self.model_type,
  235. transforms=eval_dataset.transforms,
  236. mode='eval')
  237. self.net.eval()
  238. nranks = paddle.distributed.get_world_size()
  239. local_rank = paddle.distributed.get_rank()
  240. if nranks > 1:
  241. # Initialize parallel environment if not done.
  242. if not paddle.distributed.parallel.parallel_helper._is_parallel_ctx_initialized(
  243. ):
  244. paddle.distributed.init_parallel_env()
  245. self.eval_data_loader = self.build_data_loader(
  246. eval_dataset, batch_size=batch_size, mode='eval')
  247. eval_metrics = TrainingStats()
  248. eval_details = None
  249. if return_details:
  250. eval_details = list()
  251. logging.info(
  252. "Start to evaluate(total_samples={}, total_steps={})...".format(
  253. eval_dataset.num_samples,
  254. math.ceil(eval_dataset.num_samples * 1.0 / batch_size)))
  255. with paddle.no_grad():
  256. for step, data in enumerate(self.eval_data_loader()):
  257. outputs = self.run(self.net, data, mode='eval')
  258. if return_details:
  259. eval_details.append(outputs['prediction'].numpy())
  260. outputs.pop('prediction')
  261. eval_metrics.update(outputs)
  262. if return_details:
  263. return eval_metrics.get(), eval_details
  264. else:
  265. return eval_metrics.get()
  266. def predict(self, img_file, transforms=None, topk=1):
  267. """
  268. Do inference.
  269. Args:
  270. img_file(List[np.ndarray or str], str or np.ndarray): img_file(list or str or np.array):
  271. Image path or decoded image data in a BGR format, which also could constitute a list,
  272. meaning all images to be predicted as a mini-batch.
  273. transforms(paddlex.transforms.Compose or None, optional):
  274. Transforms for inputs. If None, the transforms for evaluation process will be used. Defaults to None.
  275. topk(int, optional): Keep topk results in prediction. Defaults to 1.
  276. Returns:
  277. If img_file is a string or np.array, the result is a dict with key-value pairs:
  278. {"category_id": `category_id`, "category": `category`, "score": `score`}.
  279. If img_file is a list, the result is a list composed of dicts with the corresponding fields:
  280. category_id(int): the predicted category ID
  281. category(str): category name
  282. score(float): confidence
  283. """
  284. if transforms is None and not hasattr(self, 'test_transforms'):
  285. raise Exception("transforms need to be defined, now is None.")
  286. if transforms is None:
  287. transforms = self.test_transforms
  288. true_topk = min(self.num_classes, topk)
  289. if isinstance(img_file, (str, np.ndarray)):
  290. images = [img_file]
  291. else:
  292. images = img_file
  293. im = self._preprocess(images, transforms, self.model_type)
  294. self.net.eval()
  295. with paddle.no_grad():
  296. outputs = self.run(self.net, im, mode='test')
  297. prediction = outputs['prediction'].numpy()
  298. prediction = self._postprocess(prediction, true_topk, self.labels)
  299. if isinstance(img_file, (str, np.ndarray)):
  300. prediction = prediction[0]
  301. return prediction
  302. def _preprocess(self, images, transforms, model_type):
  303. arrange_transforms(
  304. model_type=model_type, transforms=transforms, mode='test')
  305. batch_im = list()
  306. for im in images:
  307. sample = {'image': im}
  308. batch_im.append(transforms(sample))
  309. batch_im = to_tensor(batch_im)
  310. return batch_im,
  311. def _postprocess(self, results, true_topk, labels):
  312. preds = list()
  313. for i, pred in enumerate(results):
  314. pred_label = np.argsort(pred)[::-1][:true_topk]
  315. preds.append([{
  316. 'category_id': l,
  317. 'category': labels[l],
  318. 'score': results[i][l]
  319. } for l in pred_label])
  320. return preds
  321. class ResNet18(BaseClassifier):
  322. def __init__(self, num_classes=1000):
  323. super(ResNet18, self).__init__(
  324. model_name='ResNet18', num_classes=num_classes)
  325. class ResNet34(BaseClassifier):
  326. def __init__(self, num_classes=1000):
  327. super(ResNet34, self).__init__(
  328. model_name='ResNet34', num_classes=num_classes)
  329. class ResNet50(BaseClassifier):
  330. def __init__(self, num_classes=1000):
  331. super(ResNet50, self).__init__(
  332. model_name='ResNet50', num_classes=num_classes)
  333. class ResNet101(BaseClassifier):
  334. def __init__(self, num_classes=1000):
  335. super(ResNet101, self).__init__(
  336. model_name='ResNet101', num_classes=num_classes)
  337. class ResNet152(BaseClassifier):
  338. def __init__(self, num_classes=1000):
  339. super(ResNet152, self).__init__(
  340. model_name='ResNet152', num_classes=num_classes)
  341. class ResNet18_vd(BaseClassifier):
  342. def __init__(self, num_classes=1000):
  343. super(ResNet18_vd, self).__init__(
  344. model_name='ResNet18_vd', num_classes=num_classes)
  345. class ResNet34_vd(BaseClassifier):
  346. def __init__(self, num_classes=1000):
  347. super(ResNet34_vd, self).__init__(
  348. model_name='ResNet34_vd', num_classes=num_classes)
  349. class ResNet50_vd(BaseClassifier):
  350. def __init__(self, num_classes=1000):
  351. super(ResNet50_vd, self).__init__(
  352. model_name='ResNet50_vd', num_classes=num_classes)
  353. class ResNet50_vd_ssld(BaseClassifier):
  354. def __init__(self, num_classes=1000):
  355. super(ResNet50_vd_ssld, self).__init__(
  356. model_name='ResNet50_vd_ssld',
  357. num_classes=num_classes,
  358. lr_mult_list=[.1, .1, .2, .2, .3])
  359. class ResNet101_vd(BaseClassifier):
  360. def __init__(self, num_classes=1000):
  361. super(ResNet101_vd, self).__init__(
  362. model_name='ResNet101_vd', num_classes=num_classes)
  363. class ResNet101_vd_ssld(BaseClassifier):
  364. def __init__(self, num_classes=1000):
  365. super(ResNet101_vd_ssld, self).__init__(
  366. model_name='ResNet101_vd_ssld',
  367. num_classes=num_classes,
  368. lr_mult_list=[.1, .1, .2, .2, .3])
  369. class ResNet152_vd(BaseClassifier):
  370. def __init__(self, num_classes=1000):
  371. super(ResNet152_vd, self).__init__(
  372. model_name='ResNet152_vd', num_classes=num_classes)
  373. class ResNet200_vd(BaseClassifier):
  374. def __init__(self, num_classes=1000):
  375. super(ResNet200_vd, self).__init__(
  376. model_name='ResNet200_vd', num_classes=num_classes)
  377. class AlexNet(BaseClassifier):
  378. def __init__(self, num_classes=1000):
  379. super(AlexNet, self).__init__(
  380. model_name='AlexNet', num_classes=num_classes)
  381. def get_test_inputs(self, image_shape):
  382. if image_shape == [-1, -1]:
  383. image_shape = [224, 224]
  384. logging.info('When exporting inference model for {},'.format(
  385. self.__class__.__name__
  386. ) + ' if image_shape is [-1, -1], it will be forcibly set to [224, 224]'
  387. )
  388. input_spec = [
  389. InputSpec(
  390. shape=[None, 3] + image_shape, name='image', dtype='float32')
  391. ]
  392. return input_spec
  393. class DarkNet53(BaseClassifier):
  394. def __init__(self, num_classes=1000):
  395. super(DarkNet53, self).__init__(
  396. model_name='DarkNet53', num_classes=num_classes)
  397. class MobileNetV1(BaseClassifier):
  398. def __init__(self, num_classes=1000, scale=1.0):
  399. supported_scale = [.25, .5, .75, 1.0]
  400. if scale not in supported_scale:
  401. logging.warning("scale={} is not supported by MobileNetV1, "
  402. "scale is forcibly set to 1.0".format(scale))
  403. scale = 1.0
  404. if scale == 1:
  405. model_name = 'MobileNetV1'
  406. else:
  407. model_name = 'MobileNetV1_x' + str(scale).replace('.', '_')
  408. self.scale = scale
  409. super(MobileNetV1, self).__init__(
  410. model_name=model_name, num_classes=num_classes)
  411. class MobileNetV2(BaseClassifier):
  412. def __init__(self, num_classes=1000, scale=1.0):
  413. supported_scale = [.25, .5, .75, 1.0, 1.5, 2.0]
  414. if scale not in supported_scale:
  415. logging.warning("scale={} is not supported by MobileNetV2, "
  416. "scale is forcibly set to 1.0".format(scale))
  417. scale = 1.0
  418. if scale == 1:
  419. model_name = 'MobileNetV2'
  420. else:
  421. model_name = 'MobileNetV2_x' + str(scale).replace('.', '_')
  422. super(MobileNetV2, self).__init__(
  423. model_name=model_name, num_classes=num_classes)
  424. class MobileNetV3_small(BaseClassifier):
  425. def __init__(self, num_classes=1000, scale=1.0):
  426. supported_scale = [.35, .5, .75, 1.0, 1.25]
  427. if scale not in supported_scale:
  428. logging.warning("scale={} is not supported by MobileNetV3_small, "
  429. "scale is forcibly set to 1.0".format(scale))
  430. scale = 1.0
  431. model_name = 'MobileNetV3_small_x' + str(float(scale)).replace('.',
  432. '_')
  433. super(MobileNetV3_small, self).__init__(
  434. model_name=model_name,
  435. num_classes=num_classes,
  436. lr_mult_list=[.1, .1, .2, .2, .3])
  437. class MobileNetV3_small_ssld(BaseClassifier):
  438. def __init__(self, num_classes=1000, scale=1.0):
  439. supported_scale = [.35, 1.0]
  440. if scale not in supported_scale:
  441. logging.warning(
  442. "scale={} is not supported by MobileNetV3_small_ssld, "
  443. "scale is forcibly set to 1.0".format(scale))
  444. scale = 1.0
  445. model_name = 'MobileNetV3_small_x' + str(float(scale)).replace(
  446. '.', '_') + '_ssld'
  447. super(MobileNetV3_small_ssld, self).__init__(
  448. model_name=model_name, num_classes=num_classes)
  449. class MobileNetV3_large(BaseClassifier):
  450. def __init__(self, num_classes=1000, scale=1.0):
  451. supported_scale = [.35, .5, .75, 1.0, 1.25]
  452. if scale not in supported_scale:
  453. logging.warning("scale={} is not supported by MobileNetV3_large, "
  454. "scale is forcibly set to 1.0".format(scale))
  455. scale = 1.0
  456. model_name = 'MobileNetV3_large_x' + str(float(scale)).replace('.',
  457. '_')
  458. super(MobileNetV3_large, self).__init__(
  459. model_name=model_name, num_classes=num_classes)
  460. class MobileNetV3_large_ssld(BaseClassifier):
  461. def __init__(self, num_classes=1000):
  462. super(MobileNetV3_large_ssld, self).__init__(
  463. model_name='MobileNetV3_large_x1_0_ssld', num_classes=num_classes)
  464. class DenseNet121(BaseClassifier):
  465. def __init__(self, num_classes=1000):
  466. super(DenseNet121, self).__init__(
  467. model_name='DenseNet121', num_classes=num_classes)
  468. class DenseNet161(BaseClassifier):
  469. def __init__(self, num_classes=1000):
  470. super(DenseNet161, self).__init__(
  471. model_name='DenseNet161', num_classes=num_classes)
  472. class DenseNet169(BaseClassifier):
  473. def __init__(self, num_classes=1000):
  474. super(DenseNet169, self).__init__(
  475. model_name='DenseNet169', num_classes=num_classes)
  476. class DenseNet201(BaseClassifier):
  477. def __init__(self, num_classes=1000):
  478. super(DenseNet201, self).__init__(
  479. model_name='DenseNet201', num_classes=num_classes)
  480. class DenseNet264(BaseClassifier):
  481. def __init__(self, num_classes=1000):
  482. super(DenseNet264, self).__init__(
  483. model_name='DenseNet264', num_classes=num_classes)
  484. class HRNet_W18_C(BaseClassifier):
  485. def __init__(self, num_classes=1000):
  486. super(HRNet_W18_C, self).__init__(
  487. model_name='HRNet_W18_C', num_classes=num_classes)
  488. class HRNet_W30_C(BaseClassifier):
  489. def __init__(self, num_classes=1000):
  490. super(HRNet_W30_C, self).__init__(
  491. model_name='HRNet_W30_C', num_classes=num_classes)
  492. class HRNet_W32_C(BaseClassifier):
  493. def __init__(self, num_classes=1000):
  494. super(HRNet_W32_C, self).__init__(
  495. model_name='HRNet_W32_C', num_classes=num_classes)
  496. class HRNet_W40_C(BaseClassifier):
  497. def __init__(self, num_classes=1000):
  498. super(HRNet_W40_C, self).__init__(
  499. model_name='HRNet_W40_C', num_classes=num_classes)
  500. class HRNet_W44_C(BaseClassifier):
  501. def __init__(self, num_classes=1000):
  502. super(HRNet_W44_C, self).__init__(
  503. model_name='HRNet_W44_C', num_classes=num_classes)
  504. class HRNet_W48_C(BaseClassifier):
  505. def __init__(self, num_classes=1000):
  506. super(HRNet_W48_C, self).__init__(
  507. model_name='HRNet_W48_C', num_classes=num_classes)
  508. class HRNet_W64_C(BaseClassifier):
  509. def __init__(self, num_classes=1000):
  510. super(HRNet_W64_C, self).__init__(
  511. model_name='HRNet_W64_C', num_classes=num_classes)
  512. class Xception41(BaseClassifier):
  513. def __init__(self, num_classes=1000):
  514. super(Xception41, self).__init__(
  515. model_name='Xception41', num_classes=num_classes)
  516. class Xception65(BaseClassifier):
  517. def __init__(self, num_classes=1000):
  518. super(Xception65, self).__init__(
  519. model_name='Xception65', num_classes=num_classes)
  520. class Xception71(BaseClassifier):
  521. def __init__(self, num_classes=1000):
  522. super(Xception71, self).__init__(
  523. model_name='Xception71', num_classes=num_classes)
  524. class ShuffleNetV2(BaseClassifier):
  525. def __init__(self, num_classes=1000, scale=1.0):
  526. supported_scale = [.25, .33, .5, 1.0, 1.5, 2.0]
  527. if scale not in supported_scale:
  528. logging.warning("scale={} is not supported by ShuffleNetV2, "
  529. "scale is forcibly set to 1.0".format(scale))
  530. scale = 1.0
  531. model_name = 'ShuffleNetV2_x' + str(float(scale)).replace('.', '_')
  532. super(ShuffleNetV2, self).__init__(
  533. model_name=model_name, num_classes=num_classes)
  534. def get_test_inputs(self, image_shape):
  535. if image_shape == [-1, -1]:
  536. image_shape = [224, 224]
  537. logging.info('When exporting inference model for {},'.format(
  538. self.__class__.__name__
  539. ) + ' if image_shape is [-1, -1], it will be forcibly set to [224, 224]'
  540. )
  541. input_spec = [
  542. InputSpec(
  543. shape=[None, 3] + image_shape, name='image', dtype='float32')
  544. ]
  545. return input_spec
  546. class ShuffleNetV2_swish(BaseClassifier):
  547. def __init__(self, num_classes=1000):
  548. super(ShuffleNetV2_swish, self).__init__(
  549. model_name='ShuffleNetV2_x1_5', num_classes=num_classes)
  550. def get_test_inputs(self, image_shape):
  551. if image_shape == [-1, -1]:
  552. image_shape = [224, 224]
  553. logging.info('When exporting inference model for {},'.format(
  554. self.__class__.__name__
  555. ) + ' if image_shape is [-1, -1], it will be forcibly set to [224, 224]'
  556. )
  557. input_spec = [
  558. InputSpec(
  559. shape=[None, 3] + image_shape, name='image', dtype='float32')
  560. ]
  561. return input_spec