一种新的视频分析方法:相干关键帧提取和目标分割

Xiaomu Song, Guoliang Fan
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引用次数: 2

摘要

讨论了一种新的视频分析方法,用于相干关键帧提取和目标分割。关键帧提取和目标分割作为基于内容的视频分析的两个基本单元,通常是基于不同的特征集独立实现的。我们之前的工作表明,通过利用关键帧和对象之间的内在关系,可以提取一组显著的关键帧来支持鲁棒和高效的目标分割。本研究进一步提出了一种新的分析方法,通过引入帧/像素显著性概念的统计混合模型来联合制定关键帧提取和目标分割。提出了一种改进的期望最大化算法,用于模型估计,从而得到目标分割中最显著的关键帧。合成视频和真实视频的仿真结果表明了该方法的有效性和高效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Video Analysis Approach for Coherent Key-frame Extraction and Object Segmentation
We discuss a new video analysis approach for coherent key-frame extraction and object segmentation. As two basic units for content-based video analysis, key-frame extraction and object segmentation are usually implemented independently and separately based on different feature sets. Our previous work showed that by exploiting the inherent relationship between key-frames and objects, a set of salient key-frames can be extracted to support robust and efficient object segmentation. This work furthers the previous numerical studies by suggesting a new analytical approach to jointly formulate key-frame extraction and object segmentation via a statistical mixture model where the concept of frame/pixel saliency is introduced. A modified expectation maximization algorithm is developed for model estimation that leads to the most salient key-frames for object segmentation. Simulations on both synthetic and real videos show the effectiveness and efficiency of the proposed method
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