lidar_det3d_inferencer.py 7.3 KB
Newer Older
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
# Copyright (c) OpenMMLab. All rights reserved.
import os.path as osp
from typing import Dict, List, Optional, Sequence, Union

import mmengine
import numpy as np
from mmengine.dataset import Compose
from mmengine.infer.infer import ModelType
from mmengine.structures import InstanceData

from mmdet3d.registry import INFERENCERS
from mmdet3d.utils import ConfigType, register_all_modules
from .base_det3d_inferencer import BaseDet3DInferencer

InstanceList = List[InstanceData]
InputType = Union[str, np.ndarray]
InputsType = Union[InputType, Sequence[InputType]]
PredType = Union[InstanceData, InstanceList]
ImgType = Union[np.ndarray, Sequence[np.ndarray]]
ResType = Union[Dict, List[Dict], InstanceData, List[InstanceData]]


@INFERENCERS.register_module(name='det3d-lidar')
@INFERENCERS.register_module()
class LidarDet3DInferencer(BaseDet3DInferencer):
    """The inferencer of LiDAR-based detection.

    Args:
        model (str, optional): Path to the config file or the model name
            defined in metafile. For example, it could be
            "pointpillars_kitti-3class" or
            "configs/pointpillars/pointpillars_hv_secfpn_8xb6-160e_kitti-3d-3class.py". # noqa: E501
            If model is not specified, user must provide the
            `weights` saved by MMEngine which contains the config string.
            Defaults to None.
        weights (str, optional): Path to the checkpoint. If it is not specified
            and model is a model name of metafile, the weights will be loaded
            from metafile. Defaults to None.
        device (str, optional): Device to run inference. If None, the available
            device will be automatically used. Defaults to None.
        scope (str, optional): The scope of registry.
        palette (str, optional): The palette of visualization.
    """

    preprocess_kwargs: set = set()
    forward_kwargs: set = set()
    visualize_kwargs: set = {
        'return_vis', 'show', 'wait_time', 'draw_pred', 'pred_score_thr',
        'img_out_dir'
    }
    postprocess_kwargs: set = {
        'print_result', 'pred_out_file', 'return_datasample'
    }

    def __init__(self,
                 model: Union[ModelType, str, None] = None,
                 weights: Optional[str] = None,
                 device: Optional[str] = None,
                 scope: Optional[str] = 'mmdet3d',
                 palette: str = 'none') -> None:
        # A global counter tracking the number of frames processed, for
        # naming of the output results
        self.num_visualized_frames = 0
        self.palette = palette
        register_all_modules()
        super().__init__(
            model=model, weights=weights, device=device, scope=scope)

    def _inputs_to_list(self, inputs: Union[dict, list]) -> list:
        """Preprocess the inputs to a list.

        Preprocess inputs to a list according to its type:

        - list or tuple: return inputs
        - dict: the value with key 'points' is
            - Directory path: return all files in the directory
            - other cases: return a list containing the string. The string
              could be a path to file, a url or other types of string according
              to the task.

        Args:
            inputs (Union[dict, list]): Inputs for the inferencer.

        Returns:
            list: List of input for the :meth:`preprocess`.
        """
        return super()._inputs_to_list(inputs, modality_key='points')

    def _init_pipeline(self, cfg: ConfigType) -> Compose:
        """Initialize the test pipeline."""
        pipeline_cfg = cfg.test_dataloader.dataset.pipeline

        load_img_idx = self._get_transform_idx(pipeline_cfg,
                                               'LoadPointsFromFile')
        if load_img_idx == -1:
            raise ValueError(
                'LoadPointsFromFile is not found in the test pipeline')

        load_cfg = pipeline_cfg[load_img_idx]
        self.coord_type, self.load_dim = load_cfg['coord_type'], load_cfg[
            'load_dim']
        self.use_dim = list(range(load_cfg['use_dim'])) if isinstance(
            load_cfg['use_dim'], int) else load_cfg['use_dim']

        pipeline_cfg[load_img_idx]['type'] = 'LidarDet3DInferencerLoader'
        return Compose(pipeline_cfg)

    def visualize(self,
                  inputs: InputsType,
                  preds: PredType,
                  return_vis: bool = False,
                  show: bool = False,
                  wait_time: int = 0,
                  draw_pred: bool = True,
                  pred_score_thr: float = 0.3,
                  img_out_dir: str = '') -> Union[List[np.ndarray], None]:
        """Visualize predictions.

        Args:
            inputs (InputsType): Inputs for the inferencer.
            preds (PredType): Predictions of the model.
            return_vis (bool): Whether to return the visualization result.
                Defaults to False.
            show (bool): Whether to display the image in a popup window.
                Defaults to False.
            wait_time (float): The interval of show (s). Defaults to 0.
            draw_pred (bool): Whether to draw predicted bounding boxes.
                Defaults to True.
            pred_score_thr (float): Minimum score of bboxes to draw.
                Defaults to 0.3.
            img_out_dir (str): Output directory of visualization results.
                If left as empty, no file will be saved. Defaults to ''.
        Returns:
            List[np.ndarray] or None: Returns visualization results only if
            applicable.
        """
        if self.visualizer is None or (not show and img_out_dir == ''
                                       and not return_vis):
            return None

        if getattr(self, 'visualizer') is None:
            raise ValueError('Visualization needs the "visualizer" term'
                             'defined in the config, but got None.')

        results = []

        for single_input, pred in zip(inputs, preds):
            single_input = single_input['points']
            if isinstance(single_input, str):
                pts_bytes = mmengine.fileio.get(single_input)
                points = np.frombuffer(pts_bytes, dtype=np.float32)
                points = points.reshape(-1, self.load_dim)
                points = points[:, self.use_dim]
                pc_name = osp.basename(single_input).split('.bin')[0]
                pc_name = f'{pc_name}.png'
            elif isinstance(single_input, np.ndarray):
                points = single_input.copy()
                pc_num = str(self.num_visualized_frames).zfill(8)
                pc_name = f'pc_{pc_num}.png'
            else:
                raise ValueError('Unsupported input type: '
                                 f'{type(single_input)}')

            o3d_save_path = osp.join(img_out_dir, pc_name) \
                if img_out_dir != '' else None

            data_input = dict(points=points)
            self.visualizer.add_datasample(
                pc_name,
                data_input,
                pred,
                show=show,
                wait_time=wait_time,
                draw_gt=False,
                draw_pred=draw_pred,
                pred_score_thr=pred_score_thr,
                o3d_save_path=o3d_save_path,
                vis_task='lidar_det',
            )
            results.append(points)
            self.num_visualized_frames += 1

        return results