列车运行部件双目三维重建中的遮挡区域去除

Zijian Bai, Kai Yang, Jin-long Li, Hao Sui
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引用次数: 0

摘要

最先进的立体匹配方法依赖于训练有素的cnn。然而,目前的端到端深度学习立体匹配网络没有提出有效的方法来解决在遮挡和背景区域匹配一对校正后的立体图像,导致这些区域的三维点云重建错误的问题。本文在立体匹配网络后端加入softmax模块,计算视差图置信度。根据正确区域与遮挡区域在置信度响应波形上存在形态差异的特点,去除视差图中的遮挡部分和背景部分。最后,生成了一个列车运行部件数据集来验证我们的方法。本工作实现了单幅图像采集下对汽车底部的快速三维重建与测量,为立体匹配中遮挡与背景部分的去除提供了可行的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Occlusion Area Removal in Binocular 3D Reconstruction of Train Running Parts
The state-of-the-art approaches of stereo matching rely on trained CNNs. However, there are not proposed effective methods in the current end-to-end deep learning stereo matching network to solve the problem that a pair of rectified stereo images are matched in the occlusions and background areas, which leading to erroneous reconstruction of 3D point clouds in these areas. In this paper, a softmax module to the back-end of the stereo matching network is added to calculate the confidence of the disparity map. Moreover, the occlusion part and the background part of the disparity map is removed according to the characteristic that the correct area and the occlusion area have a morphological difference on the waveform of the confidence response. Finally, a train running parts dataset is generated to prove our method. This work realizes the rapid three-dimensional reconstruction and measurement of the bottom part of the motor car under the single image acquisition, and providing a feasible solution for removing the occlusion and background parts in stereo matching.
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