dataset.py 9.09 KB
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from collections import defaultdict
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from pathlib import Path

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import numpy as np
import torch.utils.data as torch_data
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from ..utils import common_utils
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from .augmentor.data_augmentor import DataAugmentor
from .processor.data_processor import DataProcessor
from .processor.point_feature_encoder import PointFeatureEncoder


class DatasetTemplate(torch_data.Dataset):
    def __init__(self, dataset_cfg=None, class_names=None, training=True, root_path=None, logger=None):
        super().__init__()
        self.dataset_cfg = dataset_cfg
        self.training = training
        self.class_names = class_names
        self.logger = logger
        self.root_path = root_path if root_path is not None else Path(self.dataset_cfg.DATA_PATH)
        self.logger = logger
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        if self.dataset_cfg is None or class_names is None:
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            return

        self.point_cloud_range = np.array(self.dataset_cfg.POINT_CLOUD_RANGE, dtype=np.float32)
        self.point_feature_encoder = PointFeatureEncoder(
            self.dataset_cfg.POINT_FEATURE_ENCODING,
            point_cloud_range=self.point_cloud_range
        )
        self.data_augmentor = DataAugmentor(
            self.root_path, self.dataset_cfg.DATA_AUGMENTOR, self.class_names, logger=self.logger
        ) if self.training else None
        self.data_processor = DataProcessor(
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            self.dataset_cfg.DATA_PROCESSOR, point_cloud_range=self.point_cloud_range,
            training=self.training, num_point_features=self.point_feature_encoder.num_point_features
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        )

        self.grid_size = self.data_processor.grid_size
        self.voxel_size = self.data_processor.voxel_size
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        self.total_epochs = 0
        self._merge_all_iters_to_one_epoch = False
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        if hasattr(self.data_processor, "depth_downsample_factor"):
            self.depth_downsample_factor = self.data_processor.depth_downsample_factor
        else:
            self.depth_downsample_factor = None

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    @property
    def mode(self):
        return 'train' if self.training else 'test'

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    def __getstate__(self):
        d = dict(self.__dict__)
        del d['logger']
        return d

    def __setstate__(self, d):
        self.__dict__.update(d)

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    @staticmethod
    def generate_prediction_dicts(batch_dict, pred_dicts, class_names, output_path=None):
        """
        To support a custom dataset, implement this function to receive the predicted results from the model, and then
        transform the unified normative coordinate to your required coordinate, and optionally save them to disk.

        Args:
            batch_dict: dict of original data from the dataloader
            pred_dicts: dict of predicted results from the model
                pred_boxes: (N, 7), Tensor
                pred_scores: (N), Tensor
                pred_labels: (N), Tensor
            class_names:
            output_path: if it is not None, save the results to this path
        Returns:

        """

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    def merge_all_iters_to_one_epoch(self, merge=True, epochs=None):
        if merge:
            self._merge_all_iters_to_one_epoch = True
            self.total_epochs = epochs
        else:
            self._merge_all_iters_to_one_epoch = False

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    def __len__(self):
        raise NotImplementedError

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    def __getitem__(self, index):
        """
        To support a custom dataset, implement this function to load the raw data (and labels), then transform them to
        the unified normative coordinate and call the function self.prepare_data() to process the data and send them
        to the model.

        Args:
            index:

        Returns:

        """
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        raise NotImplementedError

    def prepare_data(self, data_dict):
        """
        Args:
            data_dict:
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                points: optional, (N, 3 + C_in)
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                gt_boxes: optional, (N, 7 + C) [x, y, z, dx, dy, dz, heading, ...]
                gt_names: optional, (N), string
                ...

        Returns:
            data_dict:
                frame_id: string
                points: (N, 3 + C_in)
                gt_boxes: optional, (N, 7 + C) [x, y, z, dx, dy, dz, heading, ...]
                gt_names: optional, (N), string
                use_lead_xyz: bool
                voxels: optional (num_voxels, max_points_per_voxel, 3 + C)
                voxel_coords: optional (num_voxels, 3)
                voxel_num_points: optional (num_voxels)
                ...
        """
        if self.training:
            assert 'gt_boxes' in data_dict, 'gt_boxes should be provided for training'
            gt_boxes_mask = np.array([n in self.class_names for n in data_dict['gt_names']], dtype=np.bool_)

            data_dict = self.data_augmentor.forward(
                data_dict={
                    **data_dict,
                    'gt_boxes_mask': gt_boxes_mask
                }
            )

        if data_dict.get('gt_boxes', None) is not None:
            selected = common_utils.keep_arrays_by_name(data_dict['gt_names'], self.class_names)
            data_dict['gt_boxes'] = data_dict['gt_boxes'][selected]
            data_dict['gt_names'] = data_dict['gt_names'][selected]
            gt_classes = np.array([self.class_names.index(n) + 1 for n in data_dict['gt_names']], dtype=np.int32)
            gt_boxes = np.concatenate((data_dict['gt_boxes'], gt_classes.reshape(-1, 1).astype(np.float32)), axis=1)
            data_dict['gt_boxes'] = gt_boxes

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            if data_dict.get('gt_boxes2d', None) is not None:
                data_dict['gt_boxes2d'] = data_dict['gt_boxes2d'][selected]

        if data_dict.get('points', None) is not None:
            data_dict = self.point_feature_encoder.forward(data_dict)
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        data_dict = self.data_processor.forward(
            data_dict=data_dict
        )
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        if self.training and len(data_dict['gt_boxes']) == 0:
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            new_index = np.random.randint(self.__len__())
            return self.__getitem__(new_index)

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        data_dict.pop('gt_names', None)
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        return data_dict

    @staticmethod
    def collate_batch(batch_list, _unused=False):
        data_dict = defaultdict(list)
        for cur_sample in batch_list:
            for key, val in cur_sample.items():
                data_dict[key].append(val)
        batch_size = len(batch_list)
        ret = {}

        for key, val in data_dict.items():
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            try:
                if key in ['voxels', 'voxel_num_points']:
                    ret[key] = np.concatenate(val, axis=0)
                elif key in ['points', 'voxel_coords']:
                    coors = []
                    for i, coor in enumerate(val):
                        coor_pad = np.pad(coor, ((0, 0), (1, 0)), mode='constant', constant_values=i)
                        coors.append(coor_pad)
                    ret[key] = np.concatenate(coors, axis=0)
                elif key in ['gt_boxes']:
                    max_gt = max([len(x) for x in val])
                    batch_gt_boxes3d = np.zeros((batch_size, max_gt, val[0].shape[-1]), dtype=np.float32)
                    for k in range(batch_size):
                        batch_gt_boxes3d[k, :val[k].__len__(), :] = val[k]
                    ret[key] = batch_gt_boxes3d
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                elif key in ['gt_boxes2d']:
                    max_boxes = 0
                    max_boxes = max([len(x) for x in val])
                    batch_boxes2d = np.zeros((batch_size, max_boxes, val[0].shape[-1]), dtype=np.float32)
                    for k in range(batch_size):
                        if val[k].size > 0:
                            batch_boxes2d[k, :val[k].__len__(), :] = val[k]
                    ret[key] = batch_boxes2d
                elif key in ["images", "depth_maps"]:
                    # Get largest image size (H, W)
                    max_h = 0
                    max_w = 0
                    for image in val:
                        max_h = max(max_h, image.shape[0])
                        max_w = max(max_w, image.shape[1])

                    # Change size of images
                    images = []
                    for image in val:
                        pad_h = common_utils.get_pad_params(desired_size=max_h, cur_size=image.shape[0])
                        pad_w = common_utils.get_pad_params(desired_size=max_w, cur_size=image.shape[1])
                        pad_width = (pad_h, pad_w)
                        # Pad with nan, to be replaced later in the pipeline.
                        pad_value = np.nan

                        if key == "images":
                            pad_width = (pad_h, pad_w, (0, 0))
                        elif key == "depth_maps":
                            pad_width = (pad_h, pad_w)

                        image_pad = np.pad(image,
                                           pad_width=pad_width,
                                           mode='constant',
                                           constant_values=pad_value)

                        images.append(image_pad)
                    ret[key] = np.stack(images, axis=0)
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                else:
                    ret[key] = np.stack(val, axis=0)
            except:
                print('Error in collate_batch: key=%s' % key)
                raise TypeError
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        ret['batch_size'] = batch_size
        return ret