Semi-supervised Deep Multi-view Stereo
Hongbin Xu, Weitao Chen, Yang Liu, Zhipeng Zhou, Haihong Xiao, Baigui, Sun, Xuansong Xie, Wenxiong Kang

TL;DR
This paper introduces SDA-MVS, a semi-supervised framework for multi-view stereo that effectively leverages limited labeled data and addresses distribution gaps through style transfer and consistency regularization, improving 3D reconstruction accuracy.
Contribution
The paper proposes a novel semi-supervised MVS method that handles distribution gaps with style consistency loss, enhancing performance with limited labeled data.
Findings
Outperforms fully-supervised and unsupervised baselines
Effective in reducing reliance on dense ground truth data
Improves 3D reconstruction quality in semi-supervised settings
Abstract
Significant progress has been witnessed in learning-based Multi-view Stereo (MVS) under supervised and unsupervised settings. To combine their respective merits in accuracy and completeness, meantime reducing the demand for expensive labeled data, this paper explores the problem of learning-based MVS in a semi-supervised setting that only a tiny part of the MVS data is attached with dense depth ground truth. However, due to huge variation of scenarios and flexible settings in views, it may break the basic assumption in classic semi-supervised learning, that unlabeled data and labeled data share the same label space and data distribution, named as semi-supervised distribution-gap ambiguity in the MVS problem. To handle these issues, we propose a novel semi-supervised distribution-augmented MVS framework, namely SDA-MVS. For the simple case that the basic assumption works in MVS data,…
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Taxonomy
TopicsAdvanced Vision and Imaging · Image Enhancement Techniques · Advanced Image Processing Techniques
