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Unsupervised Stereo Matching with Surface Normal Assistance for Indoor Depth Estimation.

Xiule FanAli Jahani AmiriBaris FidanSoo Jeon
Published in: Sensors (Basel, Switzerland) (2023)
To obtain more accurate depth information with stereo cameras, various learning-based stereo-matching algorithms have been developed recently. These algorithms, however, are significantly affected by textureless regions in indoor applications. To address this problem, we propose a new deep-neural-network-based data-driven stereo-matching scheme that utilizes the surface normal. The proposed scheme includes a neural network and a two-stage training strategy. The neural network involves a feature-extraction module, a normal-estimation branch, and a disparity-estimation branch. The training processes of the feature-extraction module and the normal-estimation branch are supervised while the training of the disparity-estimation branch is performed unsupervised. Experimental results indicate that the proposed scheme is capable of estimating the surface normal accurately in textureless regions, leading to improvement in the disparity-estimation accuracy and stereo-matching quality in indoor applications involving such textureless regions.
Keyphrases
  • neural network
  • machine learning
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  • deep learning
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  • risk assessment
  • visible light
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  • quality improvement