Litcius/Paper detail

MC-Stereo: Multi-Peak Lookup and Cascade Search Range for Stereo Matching

Miaojie Feng, Junda Cheng, Hao Jia, Longliang Liu, Gangwei Xu, Xin Yang

202429 citationsDOI

Abstract

Stereo matching is a fundamental task in scene comprehension. In recent years, the method based on iterative optimization has shown promise in stereo matching. However, the current iteration framework employs a single-peak lookup, which struggles to handle the multi-peak problem effectively. Additionally, the fixed search range used during the iteration process limits the final convergence effects. To address these issues, we present a novel iterative optimization architecture called MC-Stereo. This architecture mitigates the multi-peak distribution problem in matching through the multi-peak lookup strategy, and integrates the coarse-to-fine concept into the iterative framework via the cascade search range. Furthermore, given that feature representation learning is crucial for successful learn-based stereo matching, we introduce a pre-trained network to serve as the feature extractor, enhancing the front end of the stereo matching pipeline. Based on these improvements, MC-Stereo ranks first among all publicly available methods on the KITTI-2012 and KITTI-2015 benchmarks, and also achieves state-of-the-art performance on ETH3D. Code is available at https://github.com/MiaoJieF/MC-Stereo

Topics & Concepts

CascadeComputer scienceMatching (statistics)Range (aeronautics)Artificial intelligenceLookup tableComputer visionMathematicsMaterials scienceEngineeringStatisticsProgramming languageComposite materialChemical engineeringAdvanced Vision and ImagingAdvanced Image Processing TechniquesImage Processing Techniques and Applications
MC-Stereo: Multi-Peak Lookup and Cascade Search Range for Stereo Matching | Litcius