Pseudo-LiDAR for Visual Odometry
Huiying Deng, Guangming Wang, Zhiheng Feng, Chaokang Jiang, Xinrui Wu,, Yanzi Miao, and Hesheng Wang

TL;DR
This paper introduces a novel visual odometry approach using pseudo-LiDAR generated from stereo images, leveraging dense 3D point clouds to improve pose estimation accuracy, demonstrated effectively on the KITTI dataset.
Contribution
It is the first to incorporate pseudo-LiDAR into visual odometry, combining 3D geometric and semantic information for enhanced performance.
Findings
Outperforms previous visual odometry methods on KITTI dataset
Utilizes dense pseudo-LiDAR point clouds for better 3D structure understanding
Demonstrates the effectiveness of 2D-3D data fusion in odometry
Abstract
In the existing methods, LiDAR odometry shows superior performance, but visual odometry is still widely used for its price advantage. Conventionally, the task of visual odometry mainly rely on the input of continuous images. However, it is very complicated for the odometry network to learn the epipolar geometry information provided by the images. In this paper, the concept of pseudo-LiDAR is introduced into the odometry to solve this problem. The pseudo-LiDAR point cloud back-projects the depth map generated by the image into the 3D point cloud, which changes the way of image representation. Compared with the stereo images, the pseudo-LiDAR point cloud generated by the stereo matching network can get the explicit 3D coordinates. Since the 6 Degrees of Freedom (DoF) pose transformation occurs in 3D space, the 3D structure information provided by the pseudo-LiDAR point cloud is more…
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Taxonomy
TopicsAdvanced Vision and Imaging · Robotics and Sensor-Based Localization · Image and Object Detection Techniques
