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A model-based approach for human head-and-shoulder segmentation

机译:基于模型的人体头肩分割方法

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摘要

Object boundary extraction has long been a fundamental research topic, as well as an essential component in many visual computing and communication algorithms, such as computer vision, robotics, pattern recognition and video compression. Under this topic, human head-and-shoulder segmentation is of particular meaning, given the ubiquity of head-and-shoulder type of videos in social media, teleconferencing, and entertainment. Although human visual system can easily detect and recognize the head and upper body of a person, this seemingly simple task still poses a challenge to computers. In this paper, an effective and efficient segmentation method is proposed. This method consists of a novel human body descriptor in polar coordinates and a Markov chain based boundary model, which work together to generate precise boundary results. Moreover, dynamic programming is employed in this work, so as to accelerate the segmentation process. Comparisons with other algorithms are made in the experimental part, which clearly exhibits the advantage of our proposed method over some of its precedents.
机译:对象边界提取长期以来一直是基础研究主题,也是许多视觉计算和通信算法(例如计算机视觉,机器人技术,模式识别和视频压缩)中必不可少的组成部分。在此主题下,考虑到头肩型视频在社交媒体,电话会议和娱乐中的普遍性,人头肩分割具有特殊意义。尽管人类视觉系统可以轻松地检测和识别人的头部和上半身,但这看似简单的任务仍然对计算机构成了挑战。本文提出了一种有效而有效的分割方法。该方法由极坐标中的新型人体描述符和基于马尔可夫链的边界模型组成,它们共同产生精确的边界结果。此外,在这项工作中采用动态编程,以加速分割过程。在实验部分与其他算法进行了比较,这清楚地展示了我们提出的方法相对于其某些先例的优势。

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