CVDec 22, 2022

Depth Estimation maps of lidar and stereo images

arXiv:2212.11741v1h-index: 2
Originality Synthesis-oriented
AI Analysis

This is an incremental technology report for autonomous driving or robotics applications, focusing on performance analysis of existing depth estimation methods.

This paper evaluates depth estimation performance using lidar data and stereo images from Ford, comparing methods based on pure mathematics rather than machine learning. It analyzes alignment, errors, and optimization details for depth maps.

This paper as technology report is focusing on evaluation and performance about depth estimations based on lidar data and stereo images(front left and front right). The lidar 3d cloud data and stereo images are provided by ford. In addition, this paper also will explain some details about optimization for depth estimation performance. And some reasons why not use machine learning to do depth estimation, replaced by pure mathmatics to do stereo depth estimation. The structure of this paper is made of by following:(1) Performance: to discuss and evaluate about depth maps created from stereo images and 3D cloud points, and relationships analysis for alignment and errors;(2) Depth estimation by stereo images: to explain the methods about how to use stereo images to estimate depth;(3)Depth estimation by lidar: to explain the methods about how to use 3d cloud datas to estimate depth;In summary, this report is mainly to show the performance of depth maps and their approaches, analysis for them.

Foundations

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