Litcius/Paper detail

LoS: Local Structure-Guided Stereo Matching

Kunhong Li, Longguang Wang, Ye Zhang, Kaiwen Xue, Shunbo Zhou, Yulan Guo

202427 citationsDOI

Abstract

Estimating disparities in challenging areas is difficult and limits the performance of stereo matching models. In this paper, we exploit local structure information (LSI) to better handle these areas. Specifically, our LSI comprises a series of key elements, including the slant plane (parameterised by disparity gradients), disparity offset details and neighbouring relations. This LSI empowers our method to effectively handle intricate structures, including object boundaries and curved surfaces. We bootstrap the LSI from monocular depth and subsequently refine it to bet-ter capture the underlying scene geometry constraints in an iterative manner. Building upon the LSI, we introduce the Local Structure-Guided Propagation (LSGP), which enhances the disparity initialization, optimization, and refinement processes. By combining LSGP with a Gated Re-current Unit (GRU), we present our novel stereo matching method, referred to as Local Structure-guided stereo matching (LoS). Remarkably, LoS achieves top-ranking results on four widely recognized public benchmark datasets (ETH3D, Middlebury, KITTI 15 & 12) and robust vision challenge, demonstrating the superior capabilities of our model.

Topics & Concepts

Computer scienceComputer visionArtificial intelligenceMatching (statistics)MathematicsStatisticsAdvanced Vision and ImagingRobotics and Sensor-Based LocalizationAdvanced Image and Video Retrieval Techniques