基于深度图时空转换的多视点视频运动检测

Xiaoming Lu, Mei Yu, Yun Zhang, G. Jiang
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引用次数: 0

摘要

多视点视频的运动检测与提取是多视点视频应用的关键技术之一,近年来已成为一个研究热点。本文提出了一种利用深度图的语义信息和运动信息进行运动检测的新方法。首先,将一组连续的深度图像在水平和垂直方向上转换成一组连续的时空切片。在每一个时空切片中,语义信息和运动信息都包含在内,背景区域形成垂直的线条图案,运动物体形成不规则的非垂直结构。其次,通过动态阈值对时间-空间切片进行二值化。然后在水平方向和垂直方向将转换后的切片重构为时域图像掩模,并保留两个对应掩模的公共部分。最后,对重建图像进行后处理,得到运动目标的掩模。实验结果表明,该方法具有良好的运动检测性能。
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Motion detection based on temporal-to-spatial conversion of depth maps for multi-view video
Motion detection and extraction for multi-view video (MVV) is one of the key technologies for MVV applications, and it has become a hot in recent years. In this paper, a new method that will use semantic information and movement information based on depth maps for motion detection is pro-posed. First, a sequence of consecutive depth images is converted into a sequence of consecutive temporal-to-spatial slices in the horizontal and vertical directions. In each one temporal-to-spatial slice, semantic information and motion information are both included, the background region forms a vertical line pattern, and a moving object creates an irregular, non-vertical structure. Second, to binarize the temporal-to-spatial slices are binarized by a dynamic threshold. Then we reconstruct the converted slices in the horizontal and vertical directions into temporal image masks, and reserve the common part of two corresponding masks. At last, by post-processing the reconstructed images, moving object masks can be obtained. Experiment results show that the proposed method exhibits a good performance for motion detection.
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