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from typing import Dict, Optional, Sequence, Tuple
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import numpy as np
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import torch
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from mmcv.transforms import BaseTransform, to_tensor
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from mmengine.structures import InstanceData
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from mmaction.registry import TRANSFORMS
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from mmaction.structures import ActionDataSample
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@TRANSFORMS.register_module()
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class PackActionInputs(BaseTransform):
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"""Pack the inputs data.
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Args:
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collect_keys (tuple[str], optional): The keys to be collected
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to ``packed_results['inputs']``. Defaults to ``
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meta_keys (Sequence[str]): The meta keys to saved in the
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`metainfo` of the `data_sample`.
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Defaults to ``('img_shape', 'img_key', 'video_id', 'timestamp')``.
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algorithm_keys (Sequence[str]): The keys of custom elements to be used
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in the algorithm. Defaults to an empty tuple.
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"""
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mapping_table = {
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'gt_bboxes': 'bboxes',
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'gt_labels': 'labels',
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}
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def __init__(
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self,
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collect_keys: Optional[Tuple[str]] = None,
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meta_keys: Sequence[str] = ('img_shape', 'img_key', 'video_id',
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'timestamp'),
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algorithm_keys: Sequence[str] = (),
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) -> None:
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self.collect_keys = collect_keys
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self.meta_keys = meta_keys
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self.algorithm_keys = algorithm_keys
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def transform(self, results: Dict) -> Dict:
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"""The transform function of :class:`PackActionInputs`.
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Args:
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results (dict): The result dict.
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Returns:
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dict: The result dict.
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"""
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packed_results = dict()
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if self.collect_keys is not None:
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packed_results['inputs'] = dict()
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for key in self.collect_keys:
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packed_results['inputs'][key] = to_tensor(results[key])
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else:
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if 'imgs' in results:
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imgs = results['imgs']
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packed_results['inputs'] = to_tensor(imgs)
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elif 'heatmap_imgs' in results:
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heatmap_imgs = results['heatmap_imgs']
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packed_results['inputs'] = to_tensor(heatmap_imgs)
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elif 'keypoint' in results:
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keypoint = results['keypoint']
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packed_results['inputs'] = to_tensor(keypoint)
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elif 'audios' in results:
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audios = results['audios']
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packed_results['inputs'] = to_tensor(audios)
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elif 'text' in results:
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text = results['text']
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packed_results['inputs'] = to_tensor(text)
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else:
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raise ValueError(
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'Cannot get `imgs`, `keypoint`, `heatmap_imgs`, '
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'`audios` or `text` in the input dict of '
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'`PackActionInputs`.')
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data_sample = ActionDataSample()
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if 'gt_bboxes' in results:
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instance_data = InstanceData()
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for key in self.mapping_table.keys():
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instance_data[self.mapping_table[key]] = to_tensor(
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results[key])
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data_sample.gt_instances = instance_data
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if 'proposals' in results:
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data_sample.proposals = InstanceData(
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bboxes=to_tensor(results['proposals']))
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if 'label' in results:
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data_sample.set_gt_label(results['label'])
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for key in self.algorithm_keys:
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if key in results:
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data_sample.set_field(results[key], key)
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img_meta = {k: results[k] for k in self.meta_keys if k in results}
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data_sample.set_metainfo(img_meta)
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packed_results['data_samples'] = data_sample
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return packed_results
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def __repr__(self) -> str:
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repr_str = self.__class__.__name__
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repr_str += f'(collect_keys={self.collect_keys}, '
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repr_str += f'meta_keys={self.meta_keys})'
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return repr_str
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@TRANSFORMS.register_module()
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class PackLocalizationInputs(BaseTransform):
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def __init__(self, keys=(), meta_keys=('video_name', )):
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self.keys = keys
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self.meta_keys = meta_keys
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def transform(self, results):
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"""Method to pack the input data.
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Args:
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results (dict): Result dict from the data pipeline.
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Returns:
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dict:
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- 'inputs' (obj:`torch.Tensor`): The forward data of models.
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- 'data_samples' (obj:`DetDataSample`): The annotation info of the
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sample.
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"""
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packed_results = dict()
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if 'raw_feature' in results:
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raw_feature = results['raw_feature']
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packed_results['inputs'] = to_tensor(raw_feature)
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elif 'bsp_feature' in results:
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packed_results['inputs'] = torch.tensor(0.)
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else:
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raise ValueError(
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'Cannot get "raw_feature" or "bsp_feature" in the input '
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'dict of `PackActionInputs`.')
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data_sample = ActionDataSample()
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for key in self.keys:
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if key not in results:
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continue
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elif key == 'proposals':
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instance_data = InstanceData()
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instance_data[key] = to_tensor(results[key])
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data_sample.proposals = instance_data
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else:
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if hasattr(data_sample, 'gt_instances'):
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data_sample.gt_instances[key] = to_tensor(results[key])
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else:
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instance_data = InstanceData()
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instance_data[key] = to_tensor(results[key])
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data_sample.gt_instances = instance_data
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img_meta = {k: results[k] for k in self.meta_keys if k in results}
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data_sample.set_metainfo(img_meta)
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packed_results['data_samples'] = data_sample
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return packed_results
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def __repr__(self) -> str:
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repr_str = self.__class__.__name__
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repr_str += f'(meta_keys={self.meta_keys})'
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return repr_str
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@TRANSFORMS.register_module()
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class Transpose(BaseTransform):
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"""Transpose image channels to a given order.
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Args:
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keys (Sequence[str]): Required keys to be converted.
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order (Sequence[int]): Image channel order.
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"""
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def __init__(self, keys, order):
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self.keys = keys
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self.order = order
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def transform(self, results):
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"""Performs the Transpose formatting.
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Args:
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results (dict): The resulting dict to be modified and passed
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to the next transform in pipeline.
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"""
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for key in self.keys:
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results[key] = results[key].transpose(self.order)
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return results
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def __repr__(self):
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return (f'{self.__class__.__name__}('
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f'keys={self.keys}, order={self.order})')
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@TRANSFORMS.register_module()
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class FormatShape(BaseTransform):
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"""Format final imgs shape to the given input_format.
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Required keys:
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- imgs (optional)
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- heatmap_imgs (optional)
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- modality (optional)
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- num_clips
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- clip_len
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Modified Keys:
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- imgs
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Added Keys:
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- input_shape
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- heatmap_input_shape (optional)
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Args:
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input_format (str): Define the final data format.
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collapse (bool): To collapse input_format N... to ... (NCTHW to CTHW,
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etc.) if N is 1. Should be set as True when training and testing
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detectors. Defaults to False.
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"""
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def __init__(self, input_format: str, collapse: bool = False) -> None:
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self.input_format = input_format
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self.collapse = collapse
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if self.input_format not in [
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'NCTHW', 'NCHW', 'NCTHW_Heatmap', 'NPTCHW'
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]:
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raise ValueError(
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f'The input format {self.input_format} is invalid.')
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def transform(self, results: Dict) -> Dict:
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"""Performs the FormatShape formatting.
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Args:
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results (dict): The resulting dict to be modified and passed
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to the next transform in pipeline.
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"""
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if not isinstance(results['imgs'], np.ndarray):
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results['imgs'] = np.array(results['imgs'])
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if self.collapse:
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assert results['num_clips'] == 1
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if self.input_format == 'NCTHW':
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if 'imgs' in results:
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imgs = results['imgs']
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num_clips = results['num_clips']
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clip_len = results['clip_len']
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if isinstance(clip_len, dict):
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clip_len = clip_len['RGB']
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imgs = imgs.reshape((-1, num_clips, clip_len) + imgs.shape[1:])
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imgs = np.transpose(imgs, (0, 1, 5, 2, 3, 4))
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imgs = imgs.reshape((-1, ) + imgs.shape[2:])
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results['imgs'] = imgs
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results['input_shape'] = imgs.shape
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if 'heatmap_imgs' in results:
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imgs = results['heatmap_imgs']
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num_clips = results['num_clips']
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clip_len = results['clip_len']
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clip_len = clip_len['Pose']
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imgs = imgs.reshape((-1, num_clips, clip_len) + imgs.shape[1:])
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imgs = np.transpose(imgs, (0, 1, 3, 2, 4, 5))
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imgs = imgs.reshape((-1, ) + imgs.shape[2:])
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results['heatmap_imgs'] = imgs
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results['heatmap_input_shape'] = imgs.shape
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elif self.input_format == 'NCTHW_Heatmap':
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num_clips = results['num_clips']
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clip_len = results['clip_len']
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imgs = results['imgs']
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imgs = imgs.reshape((-1, num_clips, clip_len) + imgs.shape[1:])
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imgs = np.transpose(imgs, (0, 1, 3, 2, 4, 5))
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imgs = imgs.reshape((-1, ) + imgs.shape[2:])
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results['imgs'] = imgs
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results['input_shape'] = imgs.shape
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elif self.input_format == 'NCHW':
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imgs = results['imgs']
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imgs = np.transpose(imgs, (0, 3, 1, 2))
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if 'modality' in results and results['modality'] == 'Flow':
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clip_len = results['clip_len']
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imgs = imgs.reshape((-1, clip_len * imgs.shape[1]) +
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imgs.shape[2:])
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results['imgs'] = imgs
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results['input_shape'] = imgs.shape
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elif self.input_format == 'NPTCHW':
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num_proposals = results['num_proposals']
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num_clips = results['num_clips']
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clip_len = results['clip_len']
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imgs = results['imgs']
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imgs = imgs.reshape((num_proposals, num_clips * clip_len) +
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imgs.shape[1:])
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imgs = np.transpose(imgs, (0, 1, 4, 2, 3))
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results['imgs'] = imgs
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results['input_shape'] = imgs.shape
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if self.collapse:
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assert results['imgs'].shape[0] == 1
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results['imgs'] = results['imgs'].squeeze(0)
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results['input_shape'] = results['imgs'].shape
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return results
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def __repr__(self) -> str:
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repr_str = self.__class__.__name__
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repr_str += f"(input_format='{self.input_format}')"
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return repr_str
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@TRANSFORMS.register_module()
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class FormatAudioShape(BaseTransform):
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"""Format final audio shape to the given input_format.
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Required Keys:
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- audios
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Modified Keys:
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- audios
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Added Keys:
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- input_shape
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Args:
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input_format (str): Define the final imgs format.
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"""
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def __init__(self, input_format: str) -> None:
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self.input_format = input_format
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if self.input_format not in ['NCTF']:
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raise ValueError(
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f'The input format {self.input_format} is invalid.')
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def transform(self, results: Dict) -> Dict:
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"""Performs the FormatShape formatting.
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Args:
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results (dict): The resulting dict to be modified and passed
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to the next transform in pipeline.
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"""
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audios = results['audios']
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clip, sample, freq = audios.shape
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audios = audios.reshape(clip, 1, sample, freq)
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results['audios'] = audios
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results['input_shape'] = audios.shape
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return results
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def __repr__(self) -> str:
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repr_str = self.__class__.__name__
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repr_str += f"(input_format='{self.input_format}')"
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return repr_str
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@TRANSFORMS.register_module()
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class FormatGCNInput(BaseTransform):
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"""Format final skeleton shape.
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Required Keys:
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- keypoint
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- keypoint_score (optional)
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- num_clips (optional)
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Modified Key:
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- keypoint
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Args:
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num_person (int): The maximum number of people. Defaults to 2.
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mode (str): The padding mode. Defaults to ``'zero'``.
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"""
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def __init__(self, num_person: int = 2, mode: str = 'zero') -> None:
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self.num_person = num_person
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assert mode in ['zero', 'loop']
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self.mode = mode
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def transform(self, results: Dict) -> Dict:
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"""The transform function of :class:`FormatGCNInput`.
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Args:
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results (dict): The result dict.
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Returns:
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dict: The result dict.
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"""
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keypoint = results['keypoint']
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if 'keypoint_score' in results:
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keypoint = np.concatenate(
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(keypoint, results['keypoint_score'][..., None]), axis=-1)
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cur_num_person = keypoint.shape[0]
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if cur_num_person < self.num_person:
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pad_dim = self.num_person - cur_num_person
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pad = np.zeros(
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(pad_dim, ) + keypoint.shape[1:], dtype=keypoint.dtype)
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keypoint = np.concatenate((keypoint, pad), axis=0)
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if self.mode == 'loop' and cur_num_person == 1:
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for i in range(1, self.num_person):
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keypoint[i] = keypoint[0]
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elif cur_num_person > self.num_person:
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keypoint = keypoint[:self.num_person]
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M, T, V, C = keypoint.shape
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nc = results.get('num_clips', 1)
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assert T % nc == 0
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keypoint = keypoint.reshape(
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(M, nc, T // nc, V, C)).transpose(1, 0, 2, 3, 4)
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results['keypoint'] = np.ascontiguousarray(keypoint)
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return results
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def __repr__(self) -> str:
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repr_str = (f'{self.__class__.__name__}('
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f'num_person={self.num_person}, '
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f'mode={self.mode})')
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return repr_str
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