基于置信度引导的原始视差融合的闭塞感知自监督立体匹配

Xiule Fan, Soo Jeon, B. Fidan
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引用次数: 1

摘要

用于机器人和其他智能系统的商用立体摄像机通常依赖于传统的立体匹配算法来获取深度信息。尽管他们的原始(预测的)视差图包含不正确的估计,这些算法仍然可以为更准确的预测提供有用的先验信息。我们提出了一个管道来整合这些先验信息,以产生更准确的视差图。该管道包括一个置信度生成组件来识别原始视差不准确性,以及一个自监督深度神经网络(DNN)来预测视差并计算相应的遮挡掩模。提出的深度神经网络由特征提取模块、置信度引导的原始视差融合模块生成初始视差图,以及分层遮挡感知的视差细化模块计算最终估计。在公共数据集上的实验结果验证了所提出的管道具有相当的准确性和实时处理速率。我们还用商用立体相机捕获的图像测试了该管道,以显示其在改善原始视差估计方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Occlusion-Aware Self-Supervised Stereo Matching with Confidence Guided Raw Disparity Fusion
Commercially available stereo cameras used in robots and other intelligent systems to obtain depth information typically rely on traditional stereo matching algorithms. Although their raw (predicted) disparity maps contain incorrect estimates, these algorithms can still provide useful prior information towards more accurate prediction. We propose a pipeline to incorporate this prior information to produce more accurate disparity maps. The proposed pipeline includes a confidence generation component to identify raw disparity inaccuracies as well as a self-supervised deep neural network (DNN) to predict disparity and compute the corresponding occlusion masks. The proposed DNN consists of a feature extraction module, a confidence guided raw disparity fusion module to generate an initial disparity map, and a hierarchical occlusion-aware disparity refinement module to compute the final estimates. Experimental results on public datasets verify that the proposed pipeline has competitive accuracy with real-time processing rate. We also test the pipeline with images captured by commercial stereo cameras to show its effectiveness in improving their raw disparity estimates.
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