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Camera and LiDAR-based point painted voxel region-based convolutional neural network for robust 3D object detection

Authors
Xie, HanZheng, WenqiChen, YunfanShin, Hyunchul
Issue Date
Sep-2022
Publisher
S P I E - International Society for Optical Engineering
Keywords
three-dimensional object detection; LiDAR; fusion; computer vision
Citation
Journal of Electronic Imaging, v.31, no.5, pp 1 - 13
Pages
13
Indexed
SCIE
SCOPUS
Journal Title
Journal of Electronic Imaging
Volume
31
Number
5
Start Page
1
End Page
13
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/111503
DOI
10.1117/1.JEI.31.5.053025
ISSN
1017-9909
1560-229X
Abstract
Most of the three-dimensional (3D) object detection methods based on LiDAR point cloud data achieve relatively high performance in general cases. However, when the LiDAR points have noise or some corruptions, the detection performance can be severely affected. We propose a 3D object detection method that combines point cloud information with two-dimensional (2D) semantic segmentation information to enhance the feature representation for difficult cases, such as sparse, noisy, and partially absent data. Motivated by the Pointpainting techniques, we designed an early-stage fusion method based on a Voxel region-based convolutional neural network (R-CNN) architecture. The 2D semantic segmentation scores obtained by the Pointpainting techniques are appended to the raw point cloud data. The voxel-based features and 2D semantic information improve the performance in detecting instances when the point cloud is corrupted. In addition, we also designed a multiscale hierarchical region of interest pooling strategy that reduced the computational cost of Voxel R-CNN by at least 43%. Our method shows competitive results with the state-of-the-art methods on the standard KITTI dataset. In addition, three corrupted KITTI datasets, KITTI sparse (KITTI-S), KITTI jittering (KITTI-J), and KITTI dropout (KITTI-D), were used for robustness testing. With the noisy LiDAR points, our proposed point painted Voxel R-CNN achieved superior detection performance over that of the baseline Voxel R-CNN for the moderate case, with a notable improvement of 11.13% in average precision (AP) on the 3D object detection and 14.3% in AP on the bird's eye view object detection. (c) 2022 SPIE and IS&T
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