基于深度信息和主动轮廓模型的自动视频目标分割

Yingdong Ma, S. Worrall, A. Kondoz
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引用次数: 17

摘要

基于时空信息的视频目标自动分割是一个研究多年的课题。现有的方法可以在某些情况下取得良好的效果,例如在背景简单的情况下。然而,在背景杂乱或视频输入质量低的情况下,视频对象的自动分割仍然是一个没有通用解决方案的问题。本文提出了一种新的方法,在算法中使用深度信息来处理这一问题。该方法基于深度图和运动检测获得初始目标掩模。目标边界是通过在活动轮廓模型中使用多个线索(包括空间位置、强度和边缘)同时组合更新目标掩模来获得的。实验结果表明,即使在杂乱的背景下,该方法也具有良好的输出效果。当输入深度和视频质量较低时,它也具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic video object segmentation using depth information and an active contour model
Automatic video object segmentation based on spatial-temporal information has been a research topic for many years. Existing approaches can achieve good results in some cases, such as where there is a simple background. However, in the case of cluttered backgrounds or low quality video input, automatic video object segmentation is still a problem without a general solution. A novel approach is introduced in this work, to deal with this problem by using depth information in the algorithm. The proposed approach obtains the initial object masks based on depth map and on motion detection. The object boundaries are obtained by updating object masks using a simultaneous combination of multiple cues, including spatial location, intensity, and edge, within an active contour model. The experimental result shows that this method is effective and has good output, even with cluttered backgrounds. It is also robust when the quality of input depth and video is low.
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