predictor.py 4.0 KB

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  1. # copyright (c) 2024 PaddlePaddle Authors. All Rights Reserve.
  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. import os
  15. import numpy as np
  16. from ....utils import logging
  17. from ...base.predictor.transforms import image_common
  18. from ...base import BasePredictor
  19. from .keys import SegKeys as K
  20. from . import transforms as T
  21. from .utils import InnerConfig
  22. from ..model_list import MODELS
  23. class SegPredictor(BasePredictor):
  24. """SegPredictor"""
  25. entities = MODELS
  26. def __init__(
  27. self,
  28. model_name,
  29. model_dir,
  30. kernel_option,
  31. output,
  32. pre_transforms=None,
  33. post_transforms=None,
  34. has_prob_map=False,
  35. ):
  36. super().__init__(
  37. model_name=model_name,
  38. model_dir=model_dir,
  39. kernel_option=kernel_option,
  40. output=output,
  41. pre_transforms=pre_transforms,
  42. post_transforms=post_transforms,
  43. )
  44. self.has_prob_map = has_prob_map
  45. def load_other_src(self):
  46. """load the inner config file"""
  47. infer_cfg_file_path = os.path.join(self.model_dir, "inference.yml")
  48. if not os.path.exists(infer_cfg_file_path):
  49. raise FileNotFoundError(f"Cannot find config file: {infer_cfg_file_path}")
  50. return InnerConfig(infer_cfg_file_path)
  51. @classmethod
  52. def get_input_keys(cls):
  53. """get input keys"""
  54. return [[K.IMAGE], [K.IM_PATH]]
  55. @classmethod
  56. def get_output_keys(cls):
  57. """get output keys"""
  58. return [K.SEG_MAP]
  59. def _run(self, batch_input):
  60. """run"""
  61. # XXX:
  62. os.environ.pop("FLAGS_npu_jit_compile", None)
  63. images = [data[K.IMAGE] for data in batch_input]
  64. input_ = np.stack(images, axis=0)
  65. if input_.ndim == 3:
  66. input_ = input_[:, np.newaxis]
  67. input_ = input_.astype(dtype=np.float32, copy=False)
  68. outputs = self._predictor.predict([input_])
  69. out_maps = outputs[0]
  70. # In-place update
  71. pred = batch_input
  72. for dict_, out_map in zip(pred, out_maps):
  73. if self.has_prob_map:
  74. # `out_map` is prob map
  75. dict_[K.PROB_MAP] = out_map
  76. dict_[K.SEG_MAP] = np.argmax(out_map, axis=1)
  77. else:
  78. # `out_map` is seg map
  79. dict_[K.SEG_MAP] = out_map
  80. return pred
  81. def _get_pre_transforms_from_config(self):
  82. """_get_pre_transforms_from_config"""
  83. # If `K.IMAGE` (the decoded image) is found, return a default list of
  84. # transformation operators for the input (if possible).
  85. # If `K.IMAGE` (the decoded image) is not found, `K.IM_PATH` (the image
  86. # path) must be contained in the input. In this case, we infer
  87. # transformation operators from the config file.
  88. # In cases where the input contains both `K.IMAGE` and `K.IM_PATH`,
  89. # `K.IMAGE` takes precedence over `K.IM_PATH`.
  90. logging.info(
  91. f"Transformation operators for data preprocessing will be inferred from config file."
  92. )
  93. pre_transforms = self.other_src.pre_transforms
  94. pre_transforms.insert(0, image_common.ReadImage())
  95. pre_transforms.append(image_common.ToCHWImage())
  96. return pre_transforms
  97. def _get_post_transforms_from_config(self):
  98. """_get_post_transforms_from_config"""
  99. post_transforms = []
  100. if not self.disable_print:
  101. post_transforms.append(T.PrintResult())
  102. if not self.disable_save:
  103. post_transforms.extend([T.GeneratePCMap(), T.SaveSegResults(self.output)])
  104. return post_transforms