retinanet.py 13.3 KB
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# Copyright 2021 The TensorFlow Authors. All Rights Reserved.
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#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
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# Lint as: python3
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"""RetinaNet configuration definition."""

import os
from typing import List, Optional
import dataclasses
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from official.core import config_definitions as cfg
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from official.core import exp_factory
from official.modeling import hyperparams
from official.modeling import optimization
from official.vision.beta.configs import backbones
from official.vision.beta.configs import common
from official.vision.beta.configs import decoders


# pylint: disable=missing-class-docstring
@dataclasses.dataclass
class TfExampleDecoder(hyperparams.Config):
  regenerate_source_id: bool = False


@dataclasses.dataclass
class TfExampleDecoderLabelMap(hyperparams.Config):
  regenerate_source_id: bool = False
  label_map: str = ''


@dataclasses.dataclass
class DataDecoder(hyperparams.OneOfConfig):
  type: Optional[str] = 'simple_decoder'
  simple_decoder: TfExampleDecoder = TfExampleDecoder()
  label_map_decoder: TfExampleDecoderLabelMap = TfExampleDecoderLabelMap()


@dataclasses.dataclass
class Parser(hyperparams.Config):
  num_channels: int = 3
  match_threshold: float = 0.5
  unmatched_threshold: float = 0.5
  aug_rand_hflip: bool = False
  aug_scale_min: float = 1.0
  aug_scale_max: float = 1.0
  skip_crowd_during_training: bool = True
  max_num_instances: int = 100


@dataclasses.dataclass
class DataConfig(cfg.DataConfig):
  """Input config for training."""
  input_path: str = ''
  global_batch_size: int = 0
  is_training: bool = False
  dtype: str = 'bfloat16'
  decoder: DataDecoder = DataDecoder()
  parser: Parser = Parser()
  shuffle_buffer_size: int = 10000
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  file_type: str = 'tfrecord'
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@dataclasses.dataclass
class Anchor(hyperparams.Config):
  num_scales: int = 3
  aspect_ratios: List[float] = dataclasses.field(
      default_factory=lambda: [0.5, 1.0, 2.0])
  anchor_size: float = 4.0


@dataclasses.dataclass
class Losses(hyperparams.Config):
  focal_loss_alpha: float = 0.25
  focal_loss_gamma: float = 1.5
  huber_loss_delta: float = 0.1
  box_loss_weight: int = 50
  l2_weight_decay: float = 0.0


@dataclasses.dataclass
class RetinaNetHead(hyperparams.Config):
  num_convs: int = 4
  num_filters: int = 256
  use_separable_conv: bool = False


@dataclasses.dataclass
class DetectionGenerator(hyperparams.Config):
  pre_nms_top_k: int = 5000
  pre_nms_score_threshold: float = 0.05
  nms_iou_threshold: float = 0.5
  max_num_detections: int = 100
  use_batched_nms: bool = False


@dataclasses.dataclass
class RetinaNet(hyperparams.Config):
  num_classes: int = 0
  input_size: List[int] = dataclasses.field(default_factory=list)
  min_level: int = 3
  max_level: int = 7
  anchor: Anchor = Anchor()
  backbone: backbones.Backbone = backbones.Backbone(
      type='resnet', resnet=backbones.ResNet())
  decoder: decoders.Decoder = decoders.Decoder(
      type='fpn', fpn=decoders.FPN())
  head: RetinaNetHead = RetinaNetHead()
  detection_generator: DetectionGenerator = DetectionGenerator()
  norm_activation: common.NormActivation = common.NormActivation()


@dataclasses.dataclass
class RetinaNetTask(cfg.TaskConfig):
  model: RetinaNet = RetinaNet()
  train_data: DataConfig = DataConfig(is_training=True)
  validation_data: DataConfig = DataConfig(is_training=False)
  losses: Losses = Losses()
  init_checkpoint: Optional[str] = None
  init_checkpoint_modules: str = 'all'  # all or backbone
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  annotation_file: Optional[str] = None
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  per_category_metrics: bool = False
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@exp_factory.register_config_factory('retinanet')
def retinanet() -> cfg.ExperimentConfig:
  """RetinaNet general config."""
  return cfg.ExperimentConfig(
      task=RetinaNetTask(),
      restrictions=[
          'task.train_data.is_training != None',
          'task.validation_data.is_training != None'
      ])


COCO_INPUT_PATH_BASE = 'coco'
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COCO_TRAIN_EXAMPLES = 118287
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COCO_VAL_EXAMPLES = 5000


@exp_factory.register_config_factory('retinanet_resnetfpn_coco')
def retinanet_resnetfpn_coco() -> cfg.ExperimentConfig:
  """COCO object detection with RetinaNet."""
  train_batch_size = 256
  eval_batch_size = 8
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  steps_per_epoch = COCO_TRAIN_EXAMPLES // train_batch_size
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  config = cfg.ExperimentConfig(
      runtime=cfg.RuntimeConfig(mixed_precision_dtype='bfloat16'),
      task=RetinaNetTask(
          init_checkpoint='gs://cloud-tpu-checkpoints/vision-2.0/resnet50_imagenet/ckpt-28080',
          init_checkpoint_modules='backbone',
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          annotation_file=os.path.join(COCO_INPUT_PATH_BASE,
                                       'instances_val2017.json'),
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          model=RetinaNet(
              num_classes=91,
              input_size=[640, 640, 3],
              min_level=3,
              max_level=7),
          losses=Losses(l2_weight_decay=1e-4),
          train_data=DataConfig(
              input_path=os.path.join(COCO_INPUT_PATH_BASE, 'train*'),
              is_training=True,
              global_batch_size=train_batch_size,
              parser=Parser(
                  aug_rand_hflip=True, aug_scale_min=0.5, aug_scale_max=2.0)),
          validation_data=DataConfig(
              input_path=os.path.join(COCO_INPUT_PATH_BASE, 'val*'),
              is_training=False,
              global_batch_size=eval_batch_size)),
      trainer=cfg.TrainerConfig(
          train_steps=72 * steps_per_epoch,
          validation_steps=COCO_VAL_EXAMPLES // eval_batch_size,
          validation_interval=steps_per_epoch,
          steps_per_loop=steps_per_epoch,
          summary_interval=steps_per_epoch,
          checkpoint_interval=steps_per_epoch,
          optimizer_config=optimization.OptimizationConfig({
              'optimizer': {
                  'type': 'sgd',
                  'sgd': {
                      'momentum': 0.9
                  }
              },
              'learning_rate': {
                  'type': 'stepwise',
                  'stepwise': {
                      'boundaries': [
                          57 * steps_per_epoch, 67 * steps_per_epoch
                      ],
                      'values': [
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                          0.32 * train_batch_size / 256.0,
                          0.032 * train_batch_size / 256.0,
                          0.0032 * train_batch_size / 256.0
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                      ],
                  }
              },
              'warmup': {
                  'type': 'linear',
                  'linear': {
                      'warmup_steps': 500,
                      'warmup_learning_rate': 0.0067
                  }
              }
          })),
      restrictions=[
          'task.train_data.is_training != None',
          'task.validation_data.is_training != None'
      ])

  return config


@exp_factory.register_config_factory('retinanet_spinenet_coco')
def retinanet_spinenet_coco() -> cfg.ExperimentConfig:
  """COCO object detection with RetinaNet using SpineNet backbone."""
  train_batch_size = 256
  eval_batch_size = 8
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  steps_per_epoch = COCO_TRAIN_EXAMPLES // train_batch_size
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  input_size = 640

  config = cfg.ExperimentConfig(
      runtime=cfg.RuntimeConfig(mixed_precision_dtype='float32'),
      task=RetinaNetTask(
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          annotation_file=os.path.join(COCO_INPUT_PATH_BASE,
                                       'instances_val2017.json'),
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          model=RetinaNet(
              backbone=backbones.Backbone(
                  type='spinenet',
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                  spinenet=backbones.SpineNet(
                      model_id='49', stochastic_depth_drop_rate=0.2)),
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              decoder=decoders.Decoder(
                  type='identity', identity=decoders.Identity()),
              anchor=Anchor(anchor_size=3),
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              norm_activation=common.NormActivation(
                  use_sync_bn=True, activation='swish'),
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              num_classes=91,
              input_size=[input_size, input_size, 3],
              min_level=3,
              max_level=7),
          losses=Losses(l2_weight_decay=4e-5),
          train_data=DataConfig(
              input_path=os.path.join(COCO_INPUT_PATH_BASE, 'train*'),
              is_training=True,
              global_batch_size=train_batch_size,
              parser=Parser(
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                  aug_rand_hflip=True, aug_scale_min=0.1, aug_scale_max=2.0)),
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          validation_data=DataConfig(
              input_path=os.path.join(COCO_INPUT_PATH_BASE, 'val*'),
              is_training=False,
              global_batch_size=eval_batch_size)),
      trainer=cfg.TrainerConfig(
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          train_steps=500 * steps_per_epoch,
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          validation_steps=COCO_VAL_EXAMPLES // eval_batch_size,
          validation_interval=steps_per_epoch,
          steps_per_loop=steps_per_epoch,
          summary_interval=steps_per_epoch,
          checkpoint_interval=steps_per_epoch,
          optimizer_config=optimization.OptimizationConfig({
              'optimizer': {
                  'type': 'sgd',
                  'sgd': {
                      'momentum': 0.9
                  }
              },
              'learning_rate': {
                  'type': 'stepwise',
                  'stepwise': {
                      'boundaries': [
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                          475 * steps_per_epoch, 490 * steps_per_epoch
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                      ],
                      'values': [
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                          0.32 * train_batch_size / 256.0,
                          0.032 * train_batch_size / 256.0,
                          0.0032 * train_batch_size / 256.0
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                      ],
                  }
              },
              'warmup': {
                  'type': 'linear',
                  'linear': {
                      'warmup_steps': 2000,
                      'warmup_learning_rate': 0.0067
                  }
              }
          })),
      restrictions=[
          'task.train_data.is_training != None',
          'task.validation_data.is_training != None'
      ])

  return config
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@exp_factory.register_config_factory('retinanet_spinenet_mobile_coco')
def retinanet_spinenet_mobile_coco() -> cfg.ExperimentConfig:
  """COCO object detection with RetinaNet using Mobile SpineNet backbone."""
  train_batch_size = 256
  eval_batch_size = 8
  steps_per_epoch = COCO_TRAIN_EXAMPLES // train_batch_size
  input_size = 384

  config = cfg.ExperimentConfig(
      runtime=cfg.RuntimeConfig(mixed_precision_dtype='float32'),
      task=RetinaNetTask(
          annotation_file=os.path.join(COCO_INPUT_PATH_BASE,
                                       'instances_val2017.json'),
          model=RetinaNet(
              backbone=backbones.Backbone(
                  type='spinenet_mobile',
                  spinenet_mobile=backbones.SpineNetMobile(
                      model_id='49', stochastic_depth_drop_rate=0.2)),
              decoder=decoders.Decoder(
                  type='identity', identity=decoders.Identity()),
              anchor=Anchor(anchor_size=3),
              norm_activation=common.NormActivation(
                  use_sync_bn=True, activation='swish'),
              num_classes=91,
              input_size=[input_size, input_size, 3],
              min_level=3,
              max_level=7),
          losses=Losses(l2_weight_decay=4e-5),
          train_data=DataConfig(
              input_path=os.path.join(COCO_INPUT_PATH_BASE, 'train*'),
              is_training=True,
              global_batch_size=train_batch_size,
              parser=Parser(
                  aug_rand_hflip=True, aug_scale_min=0.1, aug_scale_max=2.0)),
          validation_data=DataConfig(
              input_path=os.path.join(COCO_INPUT_PATH_BASE, 'val*'),
              is_training=False,
              global_batch_size=eval_batch_size)),
      trainer=cfg.TrainerConfig(
          train_steps=600 * steps_per_epoch,
          validation_steps=COCO_VAL_EXAMPLES // eval_batch_size,
          validation_interval=steps_per_epoch,
          steps_per_loop=steps_per_epoch,
          summary_interval=steps_per_epoch,
          checkpoint_interval=steps_per_epoch,
          optimizer_config=optimization.OptimizationConfig({
              'optimizer': {
                  'type': 'sgd',
                  'sgd': {
                      'momentum': 0.9
                  }
              },
              'learning_rate': {
                  'type': 'stepwise',
                  'stepwise': {
                      'boundaries': [
                          575 * steps_per_epoch, 590 * steps_per_epoch
                      ],
                      'values': [
                          0.32 * train_batch_size / 256.0,
                          0.032 * train_batch_size / 256.0,
                          0.0032 * train_batch_size / 256.0
                      ],
                  }
              },
              'warmup': {
                  'type': 'linear',
                  'linear': {
                      'warmup_steps': 2000,
                      'warmup_learning_rate': 0.0067
                  }
              }
          })),
      restrictions=[
          'task.train_data.is_training != None',
          'task.validation_data.is_training != None'
      ])

  return config