Disparity refinement based on least square support vector machine for stereo matching

被引:0
作者
Zhang zihao
Wang xuefeng
Yu junwei
Mu yashuang
机构
[1] Henan University of Technology,School of Artificial Intelligence and Big Data
[2] Yili Normal University,School of Electronic Information Engineering
来源
Signal, Image and Video Processing | 2022年 / 16卷
关键词
Disparity refinement; Stereo matching; Least square support vector machine;
D O I
暂无
中图分类号
学科分类号
摘要
Disparity refinement is a crucial step in obtaining accurate disparity for stereo matching method. Outlier disparity value still exists in some areas (such as feeble texture and discontinuous regions), even the advanced stereo matching algorithm based on deep learning. To address this issue, a novel disparity refinement method based on the least square support vector machine (LSSVM) is proposed. In this method, the least square support vector machine model is first applied to every horizontal line of the obtained initial disparity map to model the disparity values, corresponding image color values, and coordinates of pixels. According to corresponding feature, the predicted disparity value of each pixel is calculated by this regression model. Subsequently, the outliers are detected and removed based on the residual between the real and predicted disparity value for obtaining more accurate initial disparity map. Then, along a horizontal line of the disparity map, the LSSVM with different parameters is applied to train the valid disparity values and its feature for obtaining the trained regression model. Finally, the invalid disparity values are redefined by the trained regression model. Experimental results demonstrate that the proposed method shows a better performance compared with current some disparity refinement methods. When the proposed algorithm is implemented on the disparity map of the deep learning method, the error rate has decreased and the maximum decline rate is 4.3 and 3.0 in nonocc and all regions, respectively.
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页码:2141 / 2148
页数:7
相关论文
共 32 条
[1]  
H K(2013)3d scene reconstruction from multiple spherical stereo pair Int. J. Comput. Vis. 104 94-116
[2]  
A H(2021)Bidirectional stereo matching network with double cost volumes IEEE Access 49 1-9
[3]  
Jia X(2020)A weighting algorithm based on the gravitational model for local stereo matching Signal Image Video Process. 14 315-323
[4]  
Chen W(2015)Stereo matching using tree filtering IEEE Trans. Pattern Anal. Mach. Intell. 37 834-846
[5]  
Liang Z(2019)Outlier removal based on Chauvenet’s criterion and dense disparity refinement using least square J. Electron. Image 28 1-9
[6]  
Zhang Z(2017)Look wide to match image patches with convolutional neural networks IEEE Signal Process. Lett. 24 1788-1793
[7]  
Wang Y(2016)Stereo matching by training a convolutional neural network to compare image patches J. Mach. Learn. Res. 17 1-32
[8]  
Huang T(2002)Detecting binocular half-occlusions: empirical comparisons of five approaches IEEE Trans. Pattern Anal. Mach. Intell. 24 1127-1132
[9]  
Zhan L(2021)A resource-efficient pipelined architecture for real-time semi-global stereo matching IEEE Trans. Circuits Syst. Video Technol. 99 1-10
[10]  
Yang Q(2014)Stereo matching using cost volume watershed and region merging Signal Process. Image Commun. 29 1232-1244