Research on 3D virtual vision matching based on interactive color segmentation

Author:

Wang Yahui1,Wang Haiwen12,Jin Juan3,Kuang Yingfeng4

Affiliation:

1. School of Humanities and Arts, Macau University of Science and Technology, Macau, China

2. School of Art and Design, Wuhan Technology And Business University, Wuhan, Hubei, China

3. School of Economics and Business Foreign Languages, Wuhan Technology And Business University, Wuhan, Hubei, China

4. Xiangnan University, Chenzhou, Hunan, China

Abstract

Given the prevalent issues surrounding accuracy and efficiency in contemporary stereo-matching algorithms, this research introduces an innovative image segmentation-based approach. The proposed methodology integrates residual and Swim Transformer modules into the established 3D Unet framework, yielding the Res-Swim-UNet image segmentation model. The algorithm estimates the disparateness of segmented outputs by employing regression techniques, culminating in a comprehensive disparity map. Experimental findings underscore the superiority of the proposed algorithm across all evaluated metrics. Specifically, the proposed network demonstrates marked improvements, with IoU and mPA enhancements of 2.9% and 162%, respectively. Notably, the average matching error rate of the algorithm registers at 2.02%, underscoring its efficacy in achieving precise stereoscopic matching. Moreover, the model’s enhanced generalization capability and robustness underscore its potential for widespread applicability.

Publisher

PeerJ

Reference24 articles.

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2. A deep visual correspondence embedding model for stereo matching costs;Chen,2015

3. Binocular visual dimension measurement method for rectangular workpiece with a precise stereoscopic matching algorithm;Chen;Measurement Science and Technology,2023

4. Hierarchical neural architecture search for deep stereo matching;Cheng;Advances in Neural Information Processing Systems,2020

5. Dense stereo matching with edge-constrained penalty tuning;Chuang;IEEE Geoence & Remote Sensing Letters,2018

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