A Novel Unsupervised Method for Temporal Segmentation of Videos

Xiangbin Shi, Yaguang Lu, Cuiwei Liu, Deyuan Zhang, Fang Liu
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Abstract

In this paper, we aim to address the problem of temporal segmentation of videos. Videos acquired from real world usually contain several continuous actions. Some literatures divide these real-world videos into many video clips with fixed length, since the features obtained from a single frame cannot fully describe human motion in a period. But a fixed-length video clip may contain frames from several adjacent actions, which would significantly affect the performance of action segmentation and recognition. Here we propose a novel unsupervised method based on the directions of velocity to divide an input video into a series of clips with unfixed length. Experiments conducted on the IXMAS dataset verify the effectiveness of our method.
一种新的视频时间分割的无监督方法
在本文中,我们的目标是解决视频的时间分割问题。从现实世界中获取的视频通常包含几个连续的动作。一些文献将这些真实世界的视频分成许多固定长度的视频片段,因为从单个帧中获得的特征不能完全描述一个时间段内的人体运动。但是一个固定长度的视频片段可能包含多个相邻动作的帧,这将严重影响动作分割和识别的性能。本文提出了一种基于速度方向的无监督方法,将输入视频分割成一系列长度不定的片段。在IXMAS数据集上进行的实验验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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