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Measuring the Success of Video Segmentation Algorithms

机译:衡量视频分割算法的成功

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Appropriate segmentation of video is a key step for applications such as video surveillance, video composing, video compression, storage and retrieval, and automated target recognition. Video segmentation algorithms involve dissecting the video into scenes based on shot boundaries as well as local objects and events based on spatial shape and regional motions. Many algorithmic approaches to video segmentation have been recently reported, but many lack measures to quantify the success of the segmentation especially in comparison to other algorithms. This paper suggests multiple bench-top measures for evaluating video segmentation. The paper suggests that the measures are most useful when "truth" data about the video is available such as precise frame-by-frame object shape. When precise "truth" data is unavailable, this paper suggests using hand-segmented "truth" data to measure the success of the video segmentation. Thereby, the ability of the video segmentation algorithm to achieve the same quality of segmentation as the human is obtained in the form of a variance in multiple measures. The paper introduces a suite of measures, each scaled from zero to one. A score of one on a particular measure is a perfect score for a singular segmentation measure. Measures are introduced to evaluate the ability of a segmentation algorithm to correctly detect shot boundaries, to correctly determine spatial shape and to correctly determine temporal shape. The usefulness of the measures are demonstrated on a simple segmenter designed to detect and segment a ping pong ball from a table tennis image sequence.
机译:对视频进行适当的分段是诸如视频监视,视频合成,视频压缩,存储和检索以及自动目标识别之类的应用程序的关键步骤。视频分割算法涉及基于镜头边界将视频分解为场景,以及基于空间形状和区域运动将本地对象和事件分解为视频。最近已经报道了许多用于视频分割的算法方法,但是许多方法缺乏量化分割成功的措施,特别是与其他算法相比。本文提出了多种评估视频分割的台式措施。该论文建议,当可获得有关视频的“真实”数据(如精确的逐帧对象形状)时,这些措施最为有用。当没有精确的“真相”数据时,本文建议使用手动分段的“真相”数据来衡量视频分割的成功程度。从而,以多种度量的方差形式获得了视频分割算法实现与人类相同的分割质量的能力。本文介绍了一套度量,每个度量从零缩放到一个。对于单个分割度量,一个分数的满分是一个完美分数。引入措施来评估分割算法正确检测镜头边界,正确确定空间形状和正确确定时间形状的能力。该措施的实用性在一个简单的分段器上得到了证明,该分段器设计用于从乒乓球图像序列中检测并分段乒乓球。

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