A Stereo Matching with Reconstruction Network for Low-light Stereo Vision

Rui Tang, Geng Zhang, Xuebin Liu
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引用次数: 2

Abstract

To solve the problem existing in the stereo matching of low-light images, this paper proposes a stereo matching with reconstruction network based on pyramid stereo matching network(PSMNet) and reconstruction module. In view of the characteristics of the low-light image with severe and complex noise, the image reconstruction module is added into the traditional stereo matching network for automatic denoising. In this process, the image reconstruction module assists the stereo matching module in model training, so as to reduce the influence of noise on stereo matching and obtain more accurate results. The proposed method has been evaluated and achieves good performance on the Middlebury dataset which is preprocessed. In addition, a low-light binocular platform is built to get the true low-light image and test our network in night environment, results show the disparity maps are more accurate compared with previous methods.
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基于重建网络的低光立体视觉匹配
针对低照度图像立体匹配中存在的问题,提出了一种基于金字塔立体匹配网络(PSMNet)和重建模块的立体匹配重建网络。针对低照度图像噪声严重、复杂的特点,在传统的立体匹配网络中加入图像重构模块进行自动去噪。在此过程中,图像重建模块辅助立体匹配模块进行模型训练,从而减少噪声对立体匹配的影响,获得更准确的结果。该方法在Middlebury数据集上进行了预处理,取得了良好的效果。此外,搭建了一个低光双目平台,获得了真实的低光图像,并在夜间环境下对网络进行了测试,结果表明视差图比以往的方法更准确。
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