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Deep Learning for Automated Occlusion Edge Detection in RGB-D Frames

机译:用于RGB-D帧中自动遮挡边缘检测的深度学习

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摘要

Occlusion edges correspond to range discontinuity in a scene from the point of view of the observer. Detection of occlusion edges is an important prerequisite for many machine vision and mobile robotic tasks. Although they can be extracted from range data, extracting them from images and videos would be extremely beneficial. We trained a deep convolutional neural network (CNN) to identify occlusion edges in images and videos with just RGB, RGB-D and RGB-D-UV inputs, where D stands for depth and UV stands for horizontal and vertical components of the optical flow field respectively. The use of CNN avoids hand-crafting of features for automatically isolating occlusion edges and distinguishing them from appearance edges. Other than quantitative occlusion edge detection results, qualitative results are provided to evaluate input data requirements and to demonstrate the trade-off between high resolution analysis and frame-level computation time that is critical for real-time robotics applications.
机译:从观察者的角度来看,遮挡边缘对应于场景中的距离不连续性。遮挡边缘的检测是许多机器视觉和移动机器人任务的重要前提。尽管可以从距离数据中提取它们,但是从图像和视频中提取它们将非常有益。我们训练了深度卷积神经网络(CNN),以仅使用RGB,RGB-D和RGB-D-UV输入识别图像和视频中的遮挡边缘,其中D代表深度,UV代表光流的水平和垂直分量场。 CNN的使用避免了自动创建遮挡边缘并将其与外观边缘区分开的手工特征。除了定量遮挡边缘检测结果外,还提供定性结果,以评估输入数据要求并证明高分辨率分析和帧级计算时间之间的权衡,这对于实时机器人技术至关重要。

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