Abstract
The belief propagation (BP) algorithm has some limitations, including ambiguous edges and textureless regions, and slow convergence speed. To address these problems, we present a novel algorithm that intrinsically improves both the accuracy and the convergence speed of BP. First, traditional BP generally consumes time due to numerous iterations. To reduce the number of iterations, inspired by the crucial importance of the initial value in nonlinear problems, a novel initial-value belief propagation (IVBP) algorithm is presented, which can greatly improve both convergence speed and accuracy. Second, .the majority of the existing research on BP concentrates on the smoothness term or other energy terms, neglecting the significance of the data term. In this study, a self-adapting dissimilarity data term (SDDT) is presented to improve the accuracy of the data term, which incorporates an additional gradient-based measure into the traditional data term, with the weight determined by the robust measure-based control function. Finally, this study explores the effective combination of local methods and global methods. The experimental results have demonstrated that our method performs well compared with the state-of-the-art BP and simultaneously holds better edge-preserving smoothing effects with fast convergence speed in the Middlebury and new 2014 Middlebury datasets.
Highlights
Stereo matching is one of the most extensively researched topics in computer vision and aims to infer a dense disparity or depth map by finding the correct correspondence between a pair of images captured from different viewpoints or at different times
Our initial-value belief propagation (IVBP) can intrinsically improve the accuracy of belief propagation (BP)
Two Step Global Optimization (TSGO) is best BP algorithm listed in the Middlebury datasets
Summary
Stereo matching is one of the most extensively researched topics in computer vision and aims to infer a dense disparity or depth map by finding the correct correspondence between a pair of images (inference image and target image) captured from different viewpoints or at different times. Stereo matching problems can be classified into global methods and local methods [4, 5]. Stereo matching is commonly formulated as energy function minimization frameworks. The belief propagation (BP) [6, 7] algorithm is one of the most popular global methods [8]. Numerous methods have been presented to improve BP, including loopy belief propagation (LBP) [7], hierarchical belief propagation (HBP) [9], context guided BP (CBP) [10], and fast-converging belief propagation [1].
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