CVJun 24, 2020

Road obstacles positional and dynamic features extraction combining object detection, stereo disparity maps and optical flow data

arXiv:2006.14011v16 citations
Originality Synthesis-oriented
AI Analysis

This addresses obstacle detection for autonomous vehicles or driver assistance systems, but it appears incremental as it combines existing methods like object detection, stereo disparity, and optical flow.

The paper tackled the problem of detecting obstacles and extracting their class, position, depth, and motion information for intelligent vehicle navigation using passive vision data, achieving good efficacy in assessing threat status on two datasets.

One of the most relevant tasks in an intelligent vehicle navigation system is the detection of obstacles. It is important that a visual perception system for navigation purposes identifies obstacles, and it is also important that this system can extract essential information that may influence the vehicle's behavior, whether it will be generating an alert for a human driver or guide an autonomous vehicle in order to be able to make its driving decisions. In this paper we present an approach for the identification of obstacles and extraction of class, position, depth and motion information from these objects that employs data gained exclusively from passive vision. We performed our experiments on two different data-sets and the results obtained shown a good efficacy from the use of depth and motion patterns to assess the obstacles' potential threat status.

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