README.md 18.2 KB
Newer Older
Shaoshuai Shi's avatar
Shaoshuai Shi committed
1
2
3
<img src="docs/open_mmlab.png" align="right" width="30%">

# OpenPCDet
Shaoshuai Shi's avatar
Shaoshuai Shi committed
4

Shaoshuai Shi's avatar
Shaoshuai Shi committed
5
`OpenPCDet` is a clear, simple, self-contained open source project for LiDAR-based 3D object detection. 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
6

7
It is also the official code release of [`[PointRCNN]`](https://arxiv.org/abs/1812.04244), [`[Part-A2-Net]`](https://arxiv.org/abs/1907.03670), [`[PV-RCNN]`](https://arxiv.org/abs/1912.13192), [`[Voxel R-CNN]`](https://arxiv.org/abs/2012.15712), [`[PV-RCNN++]`](https://arxiv.org/abs/2102.00463) and [`[MPPNet]`](https://arxiv.org/abs/2205.05979). 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
8

9
**Highlights**: 
10
* `OpenPCDet` has been updated to `v0.6.0` (Sep. 2022).
11
* The codes of PV-RCNN++ has been supported.
Shaoshuai Shi's avatar
Shaoshuai Shi committed
12
13
14
15

## Overview
- [Changelog](#changelog)
- [Design Pattern](#openpcdet-design-pattern)
Shaoshuai Shi's avatar
Shaoshuai Shi committed
16
- [Model Zoo](#model-zoo)
17
18
19
- [Installation](docs/INSTALL.md)
- [Quick Demo](docs/DEMO.md)
- [Getting Started](docs/GETTING_STARTED.md)
Shaoshuai Shi's avatar
Shaoshuai Shi committed
20
21
22
23
- [Citation](#citation)


## Changelog
24
25
26
[2022-09-02] **NEW:** Update `OpenPCDet` to v0.6.0:
* Official code release of [MPPNet](https://arxiv.org/abs/2205.05979) for temporal 3D object detection, which supports long-term multi-frame 3D object detection and ranks 1st place on 3D detection learderboard of Waymo Open Dataset (see the [guideline](docs/guidelines_of_approaches/mppnet.md) on how to train/test with MPPNet).
* Support multi-frame training/testing on Waymo Open Dataset (see the [change log](docs/changelog.md) for more details on how to process data).
Shaoshuai Shi's avatar
Shaoshuai Shi committed
27
* Support to save changing training details (e.g., loss, iter, epoch) to file (previous tqdm progress bar is still supported by using `--use_tqdm_to_record`). Please use `pip install gpustat` if you also want to log the GPU related information.
28
29
* Support to save latest model every 5 mintues, so you can restore the model training from latest status instead of previous epoch.   

30
[2022-08-22] Added support for [custom dataset tutorial and template](docs/CUSTOM_DATASET_TUTORIAL.md) 
31

yukang's avatar
yukang committed
32
[2022-07-05] Added support for the 3D object detection backbone network [`Focals Conv`](https://openaccess.thecvf.com/content/CVPR2022/papers/Chen_Focal_Sparse_Convolutional_Networks_for_3D_Object_Detection_CVPR_2022_paper.pdf).
33

Jiajun Deng's avatar
Jiajun Deng committed
34
35
[2022-02-12] Added support for using docker. Please refer to the guidance in [./docker](./docker).

36
[2022-02-07] Added support for Centerpoint models on Nuscenes Dataset.
37
38

[2022-01-14] Added support for dynamic pillar voxelization, following the implementation proposed in [H^23D R-CNN](https://arxiv.org/abs/2107.14391) with unique operation and [`torch_scatter`](https://github.com/rusty1s/pytorch_scatter) package.
djiajunustc's avatar
djiajunustc committed
39

Shaoshuai Shi's avatar
Shaoshuai Shi committed
40
[2022-01-05] **NEW:** Update `OpenPCDet` to v0.5.2:
41
* The code of [PV-RCNN++](https://arxiv.org/abs/2102.00463) has been released to this repo, with higher performance, faster training/inference speed and less memory consumption than PV-RCNN.
Shaoshuai Shi's avatar
Shaoshuai Shi committed
42
* Add performance of several models trained with full training set of [Waymo Open Dataset](#waymo-open-dataset-baselines).
43
44
45
* Support Lyft dataset, see the pull request [here](https://github.com/open-mmlab/OpenPCDet/pull/720).


46
47
48
49
50
[2021-12-09] **NEW:**  Update `OpenPCDet` to v0.5.1:
* Add PointPillar related baseline configs/results on [Waymo Open Dataset](#waymo-open-dataset-baselines).
* Support Pandaset dataloader, see the pull request [here](https://github.com/open-mmlab/OpenPCDet/pull/396).
* Support a set of new augmentations, see the pull request [here](https://github.com/open-mmlab/OpenPCDet/pull/653).

51
52
53
54
55
56
57
[2021-12-01] **NEW:** `OpenPCDet` v0.5.0 is released with the following features:
* Improve the performance of all models on [Waymo Open Dataset](#waymo-open-dataset-baselines). Note that you need to re-prepare the training/validation data and ground-truth database of Waymo Open Dataset (see [GETTING_STARTED.md](docs/GETTING_STARTED.md)). 
* Support anchor-free [CenterHead](pcdet/models/dense_heads/center_head.py), add configs of `CenterPoint` and `PV-RCNN with CenterHead`.
* Support lastest **PyTorch 1.1~1.10** and **spconv 1.0~2.x**, where **spconv 2.x** should be easy to install with pip and faster than previous version (see the official update of spconv [here](https://github.com/traveller59/spconv)).  
* Support config [`USE_SHARED_MEMORY`](tools/cfgs/dataset_configs/waymo_dataset.yaml) to use shared memory to potentially speed up the training process in case you suffer from an IO problem.  
* Support better and faster [visualization script](tools/visual_utils/open3d_vis_utils.py), and you need to install [Open3D](https://github.com/isl-org/Open3D) firstly. 

djiajunustc's avatar
djiajunustc committed
58
[2021-06-08] Added support for the voxel-based 3D object detection model [`Voxel R-CNN`](#KITTI-3D-Object-Detection-Baselines).
djiajunustc's avatar
djiajunustc committed
59

djiajunustc's avatar
djiajunustc committed
60
[2021-05-14] Added support for the monocular 3D object detection model [`CaDDN`](#KITTI-3D-Object-Detection-Baselines).
61

62
[2020-11-27] Bugfixed: Please re-prepare the validation infos of Waymo dataset (version 1.2) if you would like to 
63
64
65
use our provided Waymo evaluation tool (see [PR](https://github.com/open-mmlab/OpenPCDet/pull/383)). 
Note that you do not need to re-prepare the training data and ground-truth database. 

66
[2020-11-10] The [Waymo Open Dataset](#waymo-open-dataset-baselines) has been supported with state-of-the-art results. Currently we provide the 
67
configs and results of `SECOND`, `PartA2` and `PV-RCNN` on the Waymo Open Dataset, and more models could be easily supported by modifying their dataset configs. 
68

Shaoshuai Shi's avatar
Shaoshuai Shi committed
69
70
71
[2020-08-10] Bugfixed: The provided NuScenes models have been updated to fix the loading bugs. Please redownload it if you need to use the pretrained NuScenes models.

[2020-07-30] `OpenPCDet` v0.3.0 is released with the following features:
Shaoshuai Shi's avatar
Shaoshuai Shi committed
72
73
   * The Point-based and Anchor-Free models ([`PointRCNN`](#KITTI-3D-Object-Detection-Baselines), [`PartA2-Free`](#KITTI-3D-Object-Detection-Baselines)) are supported now.
   * The NuScenes dataset is supported with strong baseline results ([`SECOND-MultiHead (CBGS)`](#NuScenes-3D-Object-Detection-Baselines) and [`PointPillar-MultiHead`](#NuScenes-3D-Object-Detection-Baselines)).
Shaoshuai Shi's avatar
Shaoshuai Shi committed
74
   * High efficiency than last version, support **PyTorch 1.1~1.7** and **spconv 1.0~1.2** simultaneously.
Shaoshuai Shi's avatar
Shaoshuai Shi committed
75
   
Shaoshuai Shi's avatar
Shaoshuai Shi committed
76
77
78
79
80
81
82
83
[2020-07-17]  Add simple visualization codes and a quick demo to test with custom data. 

[2020-06-24] `OpenPCDet` v0.2.0 is released with pretty new structures to support more models and datasets. 

[2020-03-16] `OpenPCDet` v0.1.0 is released. 


## Introduction
Shaoshuai Shi's avatar
Shaoshuai Shi committed
84

85

Shaoshuai Shi's avatar
Shaoshuai Shi committed
86
### What does `OpenPCDet` toolbox do?
Shaoshuai Shi's avatar
Shaoshuai Shi committed
87

Gus-Guo's avatar
Gus-Guo committed
88
Note that we have upgrated `PCDet` from `v0.1` to `v0.2` with pretty new structures to support various datasets and models.
89

Shaoshuai Shi's avatar
Shaoshuai Shi committed
90
`OpenPCDet` is a general PyTorch-based codebase for 3D object detection from point cloud. 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
91
It currently supports multiple state-of-the-art 3D object detection methods with highly refactored codes for both one-stage and two-stage 3D detection frameworks.
Shaoshuai Shi's avatar
Shaoshuai Shi committed
92

Shaoshuai Shi's avatar
Shaoshuai Shi committed
93
Based on `OpenPCDet` toolbox, we win the Waymo Open Dataset challenge in [3D Detection](https://waymo.com/open/challenges/3d-detection/), 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
94
[3D Tracking](https://waymo.com/open/challenges/3d-tracking/), [Domain Adaptation](https://waymo.com/open/challenges/domain-adaptation/) 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
95
three tracks among all LiDAR-only methods, and the Waymo related models will be released to `OpenPCDet` soon.    
Shaoshuai Shi's avatar
Shaoshuai Shi committed
96

Shaoshuai Shi's avatar
Shaoshuai Shi committed
97
98
99
We are actively updating this repo currently, and more datasets and models will be supported soon. 
Contributions are also welcomed. 

Shaoshuai Shi's avatar
Shaoshuai Shi committed
100
### `OpenPCDet` design pattern
Shaoshuai Shi's avatar
Shaoshuai Shi committed
101

Shaoshuai Shi's avatar
Shaoshuai Shi committed
102
* Data-Model separation with unified point cloud coordinate for easily extending to custom datasets:
Shaoshuai Shi's avatar
Shaoshuai Shi committed
103
104
105
106
<p align="center">
  <img src="docs/dataset_vs_model.png" width="95%" height="320">
</p>

Shaoshuai Shi's avatar
Shaoshuai Shi committed
107
108
* Unified 3D box definition: (x, y, z, dx, dy, dz, heading).

Shaoshuai Shi's avatar
Shaoshuai Shi committed
109
110
111
112
113
* Flexible and clear model structure to easily support various 3D detection models: 
<p align="center">
  <img src="docs/model_framework.png" width="95%">
</p>

Shaoshuai Shi's avatar
Shaoshuai Shi committed
114
115
116
117
* Support various models within one framework as: 
<p align="center">
  <img src="docs/multiple_models_demo.png" width="95%">
</p>
Shaoshuai Shi's avatar
Shaoshuai Shi committed
118

Shaoshuai Shi's avatar
Shaoshuai Shi committed
119

Shaoshuai Shi's avatar
Shaoshuai Shi committed
120
### Currently Supported Features
Shaoshuai Shi's avatar
Shaoshuai Shi committed
121

Shaoshuai Shi's avatar
Shaoshuai Shi committed
122
- [x] Support both one-stage and two-stage 3D object detection frameworks
Shaoshuai Shi's avatar
Shaoshuai Shi committed
123
124
125
126
127
128
129
- [x] Support distributed training & testing with multiple GPUs and multiple machines
- [x] Support multiple heads on different scales to detect different classes
- [x] Support stacked version set abstraction to encode various number of points in different scenes
- [x] Support Adaptive Training Sample Selection (ATSS) for target assignment
- [x] Support RoI-aware point cloud pooling & RoI-grid point cloud pooling
- [x] Support GPU version 3D IoU calculation and rotated NMS 

Shaoshuai Shi's avatar
Shaoshuai Shi committed
130

Shaoshuai Shi's avatar
Shaoshuai Shi committed
131
132
133
## Model Zoo

### KITTI 3D Object Detection Baselines
134
Selected supported methods are shown in the below table. The results are the 3D detection performance of moderate difficulty on the *val* set of KITTI dataset.
135
* All LiDAR-based models are trained with 8 GTX 1080Ti GPUs and are available for download. 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
136
* The training time is measured with 8 TITAN XP GPUs and PyTorch 1.5.
Shaoshuai Shi's avatar
Shaoshuai Shi committed
137

Shaoshuai Shi's avatar
Shaoshuai Shi committed
138
|                                             | training time | Car@R11 | Pedestrian@R11 | Cyclist@R11  | download | 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
139
|---------------------------------------------|----------:|:-------:|:-------:|:-------:|:---------:|
Shaoshuai Shi's avatar
Shaoshuai Shi committed
140
141
| [PointPillar](tools/cfgs/kitti_models/pointpillar.yaml) |~1.2 hours| 77.28 | 52.29 | 62.68 | [model-18M](https://drive.google.com/file/d/1wMxWTpU1qUoY3DsCH31WJmvJxcjFXKlm/view?usp=sharing) | 
| [SECOND](tools/cfgs/kitti_models/second.yaml)       |  ~1.7 hours  | 78.62 | 52.98 | 67.15 | [model-20M](https://drive.google.com/file/d/1-01zsPOsqanZQqIIyy7FpNXStL3y4jdR/view?usp=sharing) |
142
| [SECOND-IoU](tools/cfgs/kitti_models/second_iou.yaml)       | -  | 79.09 | 55.74 | 71.31 | [model-46M](https://drive.google.com/file/d/1AQkeNs4bxhvhDQ-5sEo_yvQUlfo73lsW/view?usp=sharing) |
Shaoshuai Shi's avatar
Shaoshuai Shi committed
143
144
| [PointRCNN](tools/cfgs/kitti_models/pointrcnn.yaml) | ~3 hours | 78.70 | 54.41 | 72.11 | [model-16M](https://drive.google.com/file/d/1BCX9wMn-GYAfSOPpyxf6Iv6fc0qKLSiU/view?usp=sharing)| 
| [PointRCNN-IoU](tools/cfgs/kitti_models/pointrcnn_iou.yaml) | ~3 hours | 78.75 | 58.32 | 71.34 | [model-16M](https://drive.google.com/file/d/1V0vNZ3lAHpEEt0MlT80eL2f41K2tHm_D/view?usp=sharing)|
145
146
| [Part-A2-Free](tools/cfgs/kitti_models/PartA2_free.yaml)   | ~3.8 hours| 78.72 | 65.99 | 74.29 | [model-226M](https://drive.google.com/file/d/1lcUUxF8mJgZ_e-tZhP1XNQtTBuC-R0zr/view?usp=sharing) |
| [Part-A2-Anchor](tools/cfgs/kitti_models/PartA2.yaml)    | ~4.3 hours| 79.40 | 60.05 | 69.90 | [model-244M](https://drive.google.com/file/d/10GK1aCkLqxGNeX3lVu8cLZyE0G8002hY/view?usp=sharing) |
Shaoshuai Shi's avatar
Shaoshuai Shi committed
147
| [PV-RCNN](tools/cfgs/kitti_models/pv_rcnn.yaml) | ~5 hours| 83.61 | 57.90 | 70.47 | [model-50M](https://drive.google.com/file/d/1lIOq4Hxr0W3qsX83ilQv0nk1Cls6KAr-/view?usp=sharing) |
djiajunustc's avatar
djiajunustc committed
148
| [Voxel R-CNN (Car)](tools/cfgs/kitti_models/voxel_rcnn_car.yaml) | ~2.2 hours| 84.54 | - | - | [model-28M](https://drive.google.com/file/d/19_jiAeGLz7V0wNjSJw4cKmMjdm5EW5By/view?usp=sharing) |
yukang's avatar
yukang committed
149
| [Focals Conv - F](tools/cfgs/kitti_models/voxel_rcnn_car_focal_multimodal.yaml) | ~4 hours| 85.66 | - | - | [model-30M](https://drive.google.com/file/d/1u2Vcg7gZPOI-EqrHy7_6fqaibvRt2IjQ/view?usp=sharing) |
150
151
||
| [CaDDN (Mono)](tools/cfgs/kitti_models/CaDDN.yaml) |~15 hours| 21.38 | 13.02 | 9.76 | [model-774M](https://drive.google.com/file/d/1OQTO2PtXT8GGr35W9m2GZGuqgb6fyU1V/view?usp=sharing) |
Shaoshuai Shi's avatar
Shaoshuai Shi committed
152

Shaoshuai Shi's avatar
Shaoshuai Shi committed
153
### Waymo Open Dataset Baselines
Shaoshuai Shi's avatar
Shaoshuai Shi committed
154
We provide the setting of [`DATA_CONFIG.SAMPLED_INTERVAL`](tools/cfgs/dataset_configs/waymo_dataset.yaml) on the Waymo Open Dataset (WOD) to subsample partial samples for training and evaluation, 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
155
so you could also play with WOD by setting a smaller `DATA_CONFIG.SAMPLED_INTERVAL` even if you only have limited GPU resources. 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
156

157
By default, all models are trained with **a single frame** of **20% data (~32k frames)** of all the training samples on 8 GTX 1080Ti GPUs, and the results of each cell here are mAP/mAPH calculated by the official Waymo evaluation metrics on the **whole** validation set (version 1.2).    
Shaoshuai Shi's avatar
Shaoshuai Shi committed
158

159
|    Performance@(train with 20\% Data)            | Vec_L1 | Vec_L2 | Ped_L1 | Ped_L2 | Cyc_L1 | Cyc_L2 |  
Shaoshuai Shi's avatar
Shaoshuai Shi committed
160
|---------------------------------------------|----------:|:-------:|:-------:|:-------:|:-------:|:-------:|
161
| [SECOND](tools/cfgs/waymo_models/second.yaml) | 70.96/70.34|62.58/62.02|65.23/54.24	|57.22/47.49|	57.13/55.62 |	54.97/53.53 | 
162
163
| [PointPillar](tools/cfgs/waymo_models/pointpillar_1x.yaml) | 70.43/69.83 |	62.18/61.64 | 66.21/46.32|58.18/40.64|55.26/51.75|53.18/49.80 |
[CenterPoint-Pillar](tools/cfgs/waymo_models/centerpoint_pillar_1x.yaml)| 70.50/69.96|62.18/61.69|73.11/61.97|65.06/55.00|65.44/63.85|62.98/61.46| 
djiajunustc's avatar
djiajunustc committed
164
[CenterPoint-Dynamic-Pillar](tools/cfgs/waymo_models/centerpoint_dyn_pillar_1x.yaml)| 70.46/69.93|62.06/61.58|73.92/63.35|65.91/56.33|66.24/64.69|63.73/62.24| 
165
[CenterPoint](tools/cfgs/waymo_models/centerpoint_without_resnet.yaml)| 71.33/70.76|63.16/62.65|	72.09/65.49	|64.27/58.23|	68.68/67.39	|66.11/64.87|
166
| [CenterPoint (ResNet)](tools/cfgs/waymo_models/centerpoint.yaml)|72.76/72.23|64.91/64.42	|74.19/67.96	|66.03/60.34|	71.04/69.79	|68.49/67.28 |
167
168
169
| [Part-A2-Anchor](tools/cfgs/waymo_models/PartA2.yaml) | 74.66/74.12	|65.82/65.32	|71.71/62.24	|62.46/54.06	|66.53/65.18	|64.05/62.75 |
| [PV-RCNN (AnchorHead)](tools/cfgs/waymo_models/pv_rcnn.yaml) | 75.41/74.74	|67.44/66.80	|71.98/61.24	|63.70/53.95	|65.88/64.25	|63.39/61.82 | 
| [PV-RCNN (CenterHead)](tools/cfgs/waymo_models/pv_rcnn_with_centerhead_rpn.yaml) | 75.95/75.43	|68.02/67.54	|75.94/69.40	|67.66/61.62	|70.18/68.98	|67.73/66.57|
170
| [Voxel R-CNN (CenterHead)-Dynamic-Voxel](tools/cfgs/waymo_models/voxel_rcnn_with_centerhead_dyn_voxel.yaml) | 76.13/75.66	|68.18/67.74	|78.20/71.98	|69.29/63.59	| 70.75/69.68	|68.25/67.21|
171
172
173
174
175
176
177
178
| [PV-RCNN++](tools/cfgs/waymo_models/pv_rcnn_plusplus.yaml) | 77.82/77.32|	69.07/68.62|	77.99/71.36|	69.92/63.74|	71.80/70.71|	69.31/68.26|
| [PV-RCNN++ (ResNet)](tools/cfgs/waymo_models/pv_rcnn_plusplus_resnet.yaml) |77.61/77.14|	69.18/68.75|	79.42/73.31|	70.88/65.21|	72.50/71.39|	69.84/68.77|


Here we also provide the performance of several models trained on the full training set (refer to the paper of [PV-RCNN++](https://arxiv.org/abs/2102.00463)):

|    Performance@(train with 100\% Data)            | Vec_L1 | Vec_L2 | Ped_L1 | Ped_L2 | Cyc_L1 | Cyc_L2 |  
|---------------------------------------------|----------:|:-------:|:-------:|:-------:|:-------:|:-------:|
179
| [SECOND](tools/cfgs/waymo_models/second.yaml) | 72.27/71.69 | 63.85/63.33 | 68.70/58.18 | 60.72/51.31 | 60.62/59.28 | 58.34/57.05 | 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
180
| [CenterPoint-Pillar](tools/cfgs/waymo_models/centerpoint_pillar_1x.yaml)| 73.37/72.86 | 65.09/64.62 | 75.35/65.11 | 67.61/58.25 | 67.76/66.22 | 65.25/63.77 | 
181
| [Part-A2-Anchor](tools/cfgs/waymo_models/PartA2.yaml) | 77.05/76.51 | 68.47/67.97 | 75.24/66.87 | 66.18/58.62 | 68.60/67.36 | 66.13/64.93 |
182
| [PV-RCNN (CenterHead)](tools/cfgs/waymo_models/pv_rcnn_with_centerhead_rpn.yaml) | 78.00/77.50 | 69.43/68.98 | 79.21/73.03 | 70.42/64.72 | 71.46/70.27 | 68.95/67.79 |
183
| [PV-RCNN++](tools/cfgs/waymo_models/pv_rcnn_plusplus.yaml) | 79.10/78.63 | 70.34/69.91 | 80.62/74.62 | 71.86/66.30 | 73.49/72.38 | 70.70/69.62 |
184
| [PV-RCNN++ (ResNet)](tools/cfgs/waymo_models/pv_rcnn_plusplus_resnet.yaml) | 79.25/78.78 | 70.61/70.18 | 81.83/76.28 | 73.17/68.00 | 73.72/72.66 | 71.21/70.19 |
185
186
187



Shaoshuai Shi's avatar
Shaoshuai Shi committed
188

189
190
We could not provide the above pretrained models due to [Waymo Dataset License Agreement](https://waymo.com/open/terms/), 
but you could easily achieve similar performance by training with the default configs.
Shaoshuai Shi's avatar
Shaoshuai Shi committed
191

192
193
194
195
196
197
198
### NuScenes 3D Object Detection Baselines
All models are trained with 8 GTX 1080Ti GPUs and are available for download.

|                                             | mATE | mASE | mAOE | mAVE | mAAE | mAP | NDS | download | 
|---------------------------------------------|----------:|:-------:|:-------:|:-------:|:---------:|:-------:|:-------:|:---------:|
| [PointPillar-MultiHead](tools/cfgs/nuscenes_models/cbgs_pp_multihead.yaml) | 33.87	| 26.00 | 32.07	| 28.74 | 20.15 | 44.63 | 58.23	 | [model-23M](https://drive.google.com/file/d/1p-501mTWsq0G9RzroTWSXreIMyTUUpBM/view?usp=sharing) | 
| [SECOND-MultiHead (CBGS)](tools/cfgs/nuscenes_models/cbgs_second_multihead.yaml) | 31.15 |	25.51 |	26.64 | 26.26 | 20.46 | 50.59 | 62.29 | [model-35M](https://drive.google.com/file/d/1bNzcOnE3u9iooBFMk2xK7HqhdeQ_nwTq/view?usp=sharing) |
199
| [CenterPoint-PointPillar](tools/cfgs/nuscenes_models/cbgs_dyn_pp_centerpoint.yaml) | 31.13 |	26.04 |	42.92 | 23.90 | 19.14 | 50.03 | 60.70 | [model-23M](https://drive.google.com/file/d/1UvGm6mROMyJzeSRu7OD1leU_YWoAZG7v/view?usp=sharing) |
200
201
| [CenterPoint (voxel_size=0.1)](tools/cfgs/nuscenes_models/cbgs_voxel01_res3d_centerpoint.yaml) | 30.11 |	25.55 |	38.28 | 21.94 | 18.87 | 56.03 | 64.54 | [model-34M](https://drive.google.com/file/d/1Cz-J1c3dw7JAWc25KRG1XQj8yCaOlexQ/view?usp=sharing) |
| [CenterPoint (voxel_size=0.075)](tools/cfgs/nuscenes_models/cbgs_voxel0075_res3d_centerpoint.yaml) | 28.80 |	25.43 |	37.27 | 21.55 | 18.24 | 59.22 | 66.48 | [model-34M](https://drive.google.com/file/d/1XOHAWm1MPkCKr1gqmc3TWi5AYZgPsgxU/view?usp=sharing) |
Shaoshuai Shi's avatar
Shaoshuai Shi committed
202

Shaoshuai Shi's avatar
Shaoshuai Shi committed
203

Shaoshuai Shi's avatar
Shaoshuai Shi committed
204
### Other datasets
205
Welcome to support other datasets by submitting pull request. 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
206

Shaoshuai Shi's avatar
Shaoshuai Shi committed
207
208
## Installation

Shaoshuai Shi's avatar
Shaoshuai Shi committed
209
Please refer to [INSTALL.md](docs/INSTALL.md) for the installation of `OpenPCDet`.
Shaoshuai Shi's avatar
Shaoshuai Shi committed
210
211


212
213
214
215
## Quick Demo
Please refer to [DEMO.md](docs/DEMO.md) for a quick demo to test with a pretrained model and 
visualize the predicted results on your custom data or the original KITTI data.

Shaoshuai Shi's avatar
Shaoshuai Shi committed
216
## Getting Started
Shaoshuai Shi's avatar
Shaoshuai Shi committed
217
218
219

Please refer to [GETTING_STARTED.md](docs/GETTING_STARTED.md) to learn more usage about this project.

220

Shaoshuai Shi's avatar
Shaoshuai Shi committed
221
222
## License

Shaoshuai Shi's avatar
Shaoshuai Shi committed
223
`OpenPCDet` is released under the [Apache 2.0 license](LICENSE).
Shaoshuai Shi's avatar
Shaoshuai Shi committed
224
225

## Acknowledgement
Shaoshuai Shi's avatar
Shaoshuai Shi committed
226
`OpenPCDet` is an open source project for LiDAR-based 3D scene perception that supports multiple
Shaoshuai Shi's avatar
Shaoshuai Shi committed
227
228
229
230
231
232
233
234
235
236
237
LiDAR-based perception models as shown above. Some parts of `PCDet` are learned from the official released codes of the above supported methods. 
We would like to thank for their proposed methods and the official implementation.   

We hope that this repo could serve as a strong and flexible codebase to benefit the research community by speeding up the process of reimplementing previous works and/or developing new methods.


## Citation 
If you find this project useful in your research, please consider cite:


```
Shaoshuai Shi's avatar
Shaoshuai Shi committed
238
@misc{openpcdet2020,
Shaoshuai Shi's avatar
Shaoshuai Shi committed
239
240
241
242
    title={OpenPCDet: An Open-source Toolbox for 3D Object Detection from Point Clouds},
    author={OpenPCDet Development Team},
    howpublished = {\url{https://github.com/open-mmlab/OpenPCDet}},
    year={2020}
Shaoshuai Shi's avatar
Shaoshuai Shi committed
243
}
Shaoshuai Shi's avatar
Shaoshuai Shi committed
244
```
Shaoshuai Shi's avatar
Shaoshuai Shi committed
245

Shaoshuai Shi's avatar
Shaoshuai Shi committed
246
247
## Contribution
Welcome to be a member of the OpenPCDet development team by contributing to this repo, and feel free to contact us for any potential contributions. 
Shaoshuai Shi's avatar
Shaoshuai Shi committed
248

Shaoshuai Shi's avatar
Shaoshuai Shi committed
249