Real-time Stereo Reconstruction Failure Detection and Correction using Deep Learning

Vlad-Cristian Miclea, L. Miclea, S. Nedevschi
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引用次数: 1

Abstract

This paper introduces a stereo reconstruction method that besides producing accurate results in real-time, is capable to detect and conceal possible failures caused by one of the cameras. A classification of stereo camera sensor faults is initially introduced, the most common types of defects being highlighted. We next present a stereo camera failure detection method in which various additional checks are being introduced, with respect to the aforementioned error classification. Furthermore, we propose a novel error correction method based on CNNs (convolutional neural networks) that is capable of generating reliable disparity maps by using prior information provided by semantic segmentation in conjunction with the last available disparity. We highlight the efficiency of our approach by evaluating its performance in various driving scenarios and show that it produces accurate disparities on images from Kitti stereo and raw datasets while running in real-time on a regular GPU.
基于深度学习的实时立体重建故障检测与校正
本文介绍了一种立体重建方法,该方法不仅能够实时产生准确的结果,而且能够检测和掩盖其中一个摄像机可能引起的故障。首先介绍了立体相机传感器故障的分类,重点介绍了最常见的故障类型。接下来,我们提出了一种立体相机故障检测方法,其中引入了各种额外的检查,针对上述错误分类。此外,我们提出了一种基于cnn(卷积神经网络)的纠错方法,该方法能够利用语义分割提供的先验信息结合最后可用的视差生成可靠的视差图。我们通过评估其在各种驾驶场景中的性能来强调我们的方法的效率,并表明它在常规GPU上实时运行时对来自Kitti立体图像和原始数据集的图像产生准确的差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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