mmedit.engine.runner.edit_loops¶
Module Contents¶
Classes¶
Validation loop for MMEditing models. This class support evaluate: |
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Test loop for MMEditing models. This class support evaluate: |
Attributes¶
- class mmedit.engine.runner.edit_loops.EditValLoop(runner, dataloader: DATALOADER_TYPE, evaluator: EVALUATOR_TYPE, fp16: bool = False)[源代码]¶
Bases:
mmengine.runner.base_loop.BaseLoopValidation loop for MMEditing models. This class support evaluate:
Metrics (metric) on a single dataset (e.g. PSNR and SSIM on DIV2K dataset)
Different metrics on different datasets (e.g. PSNR on DIV2K and SSIM and PSNR on SET5)
Use cases:
Case 1: metrics on a single dataset
>>> # add the following lines in your config >>> # 1. use `EditValLoop` instead of `ValLoop` in MMEngine >>> val_cfg = dict(type='EditValLoop') >>> # 2. specific EditEvaluator instead of Evaluator in MMEngine >>> val_evaluator = dict( >>> type='EditEvaluator', >>> metrics=[ >>> dict(type='PSNR', crop_border=2, prefix='Set5'), >>> dict(type='SSIM', crop_border=2, prefix='Set5'), >>> ]) >>> # 3. define dataloader >>> val_dataloader = dict(...)
Case 2: different metrics on different datasets
>>> # add the following lines in your config >>> # 1. use `EditValLoop` instead of `ValLoop` in MMEngine >>> val_cfg = dict(type='EditValLoop') >>> # 2. specific a list EditEvaluator >>> # do not forget to add prefix for each metric group >>> div2k_evaluator = dict( >>> type='EditEvaluator', >>> metrics=dict(type='SSIM', crop_border=2, prefix='DIV2K')) >>> set5_evaluator = dict( >>> type='EditEvaluator', >>> metrics=[ >>> dict(type='PSNR', crop_border=2, prefix='Set5'), >>> dict(type='SSIM', crop_border=2, prefix='Set5'), >>> ]) >>> # define evaluator config >>> val_evaluator = [div2k_evaluator, set5_evaluator] >>> # 3. specific a list dataloader for each metric groups >>> div2k_dataloader = dict(...) >>> set5_dataloader = dict(...) >>> # define dataloader config >>> val_dataloader = [div2k_dataloader, set5_dataloader]
- 参数
runner (Runner) – A reference of runner.
dataloader (Dataloader or dict or list) – A dataloader object or a dict to build a dataloader a list of dataloader object or a list of config dicts.
evaluator (Evaluator or dict or list) – A evaluator object or a dict to build the evaluator or a list of evaluator object or a list of config dicts.
- _build_dataloaders(dataloader: DATALOADER_TYPE) List[torch.utils.data.DataLoader][源代码]¶
Build dataloaders.
- 参数
dataloader (Dataloader or dict or list) – A dataloader object or a dict to build a dataloader a list of dataloader object or a list of config dict.
- 返回
List of dataloaders for compute metrics.
- 返回类型
List[Dataloader]
- _build_evaluators(evaluator: EVALUATOR_TYPE) List[mmengine.evaluator.Evaluator][源代码]¶
Build evaluators.
- 参数
evaluator (Evaluator or dict or list) – A evaluator object or a dict to build the evaluator or a list of evaluator object or a list of config dicts.
- 返回
List of evaluators for compute metrics.
- 返回类型
List[Evaluator]
- run()[源代码]¶
Launch validation. The evaluation process consists of four steps.
Prepare pre-calculated items for all metrics by calling
self.evaluator.prepare_metrics().Get a list of metrics-sampler pair. Each pair contains a list of metrics with the same sampler mode and a shared sampler.
Generate images for the each metrics group. Loop for elements in each sampler and feed to the model as input by calling
self.run_iter().Evaluate all metrics by calling
self.evaluator.evaluate().
- run_iter(idx, data_batch: dict, metrics: Sequence[mmengine.evaluator.BaseMetric])[源代码]¶
Iterate one mini-batch and feed the output to corresponding metrics.
- 参数
idx (int) – Current idx for the input data.
data_batch (dict) – Batch of data from dataloader.
metrics (Sequence[BaseMetric]) – Specific metrics to evaluate.
- class mmedit.engine.runner.edit_loops.EditTestLoop(runner, dataloader, evaluator, fp16=False)[源代码]¶
Bases:
mmengine.runner.base_loop.BaseLoopTest loop for MMEditing models. This class support evaluate:
Metrics (metric) on a single dataset (e.g. PSNR and SSIM on DIV2K dataset)
Different metrics on different datasets (e.g. PSNR on DIV2K and SSIM and PSNR on SET5)
Use cases:
Case 1: metrics on a single dataset
>>> # add the following lines in your config >>> # 1. use `EditTestLoop` instead of `TestLoop` in MMEngine >>> val_cfg = dict(type='EditTestLoop') >>> # 2. specific EditEvaluator instead of Evaluator in MMEngine >>> test_evaluator = dict( >>> type='EditEvaluator', >>> metrics=[ >>> dict(type='PSNR', crop_border=2, prefix='Set5'), >>> dict(type='SSIM', crop_border=2, prefix='Set5'), >>> ]) >>> # 3. define dataloader >>> test_dataloader = dict(...)
Case 2: different metrics on different datasets
>>> # add the following lines in your config >>> # 1. use `EditTestLoop` instead of `TestLoop` in MMEngine >>> Test_cfg = dict(type='EditTestLoop') >>> # 2. specific a list EditEvaluator >>> # do not forget to add prefix for each metric group >>> div2k_evaluator = dict( >>> type='EditEvaluator', >>> metrics=dict(type='SSIM', crop_border=2, prefix='DIV2K')) >>> set5_evaluator = dict( >>> type='EditEvaluator', >>> metrics=[ >>> dict(type='PSNR', crop_border=2, prefix='Set5'), >>> dict(type='SSIM', crop_border=2, prefix='Set5'), >>> ]) >>> # define evaluator config >>> test_evaluator = [div2k_evaluator, set5_evaluator] >>> # 3. specific a list dataloader for each metric groups >>> div2k_dataloader = dict(...) >>> set5_dataloader = dict(...) >>> # define dataloader config >>> test_dataloader = [div2k_dataloader, set5_dataloader]
- 参数
runner (Runner) – A reference of runner.
dataloader (Dataloader or dict or list) – A dataloader object or a dict to build a dataloader a list of dataloader object or a list of config dicts.
evaluator (Evaluator or dict or list) – A evaluator object or a dict to build the evaluator or a list of evaluator object or a list of config dicts.
- _build_dataloaders(dataloader: DATALOADER_TYPE) List[torch.utils.data.DataLoader][源代码]¶
Build dataloaders.
- 参数
dataloader (Dataloader or dict or list) – A dataloader object or a dict to build a dataloader a list of dataloader object or a list of config dict.
- 返回
List of dataloaders for compute metrics.
- 返回类型
List[Dataloader]
- _build_evaluators(evaluator: EVALUATOR_TYPE) List[mmengine.evaluator.Evaluator][源代码]¶
Build evaluators.
- 参数
evaluator (Evaluator or dict or list) – A evaluator object or a dict to build the evaluator or a list of evaluator object or a list of config dicts.
- 返回
List of evaluators for compute metrics.
- 返回类型
List[Evaluator]
- run()[源代码]¶
Launch validation. The evaluation process consists of four steps.
Prepare pre-calculated items for all metrics by calling
self.evaluator.prepare_metrics().Get a list of metrics-sampler pair. Each pair contains a list of metrics with the same sampler mode and a shared sampler.
Generate images for the each metrics group. Loop for elements in each sampler and feed to the model as input by calling
self.run_iter().Evaluate all metrics by calling
self.evaluator.evaluate().
- run_iter(idx, data_batch: dict, metrics: Sequence[mmengine.evaluator.BaseMetric])[源代码]¶
Iterate one mini-batch and feed the output to corresponding metrics.
- 参数
idx (int) – Current idx for the input data.
data_batch (dict) – Batch of data from dataloader.
metrics (Sequence[BaseMetric]) – Specific metrics to evaluate.