Temporal Segmentation of Egocentric Videos

Y. Poleg, Chetan Arora, Shmuel Peleg
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引用次数: 171

Abstract

The use of wearable cameras makes it possible to record life logging egocentric videos. Browsing such long unstructured videos is time consuming and tedious. Segmentation into meaningful chapters is an important first step towards adding structure to egocentric videos, enabling efficient browsing, indexing and summarization of the long videos. Two sources of information for video segmentation are (i) the motion of the camera wearer, and (ii) the objects and activities recorded in the video. In this paper we address the motion cues for video segmentation. Motion based segmentation is especially difficult in egocentric videos when the camera is constantly moving due to natural head movement of the wearer. We propose a robust temporal segmentation of egocentric videos into a hierarchy of motion classes using a new Cumulative Displacement Curves. Unlike instantaneous motion vectors, segmentation using integrated motion vectors performs well even in dynamic and crowded scenes. No assumptions are made on the underlying scene structure and the method works in indoor as well as outdoor situations. We demonstrate the effectiveness of our approach using publicly available videos as well as choreographed videos. We also suggest an approach to detect the fixation of wearer's gaze in the walking portion of the egocentric videos.
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自我中心视频的时间分割
使用可穿戴相机可以记录以自我为中心的生活日志视频。浏览这种冗长的无结构视频既耗时又乏味。分割成有意义的章节是为以自我为中心的视频添加结构的重要的第一步,使长视频能够有效地浏览,索引和总结。视频分割的两个信息源是(i)摄像机佩戴者的运动,以及(ii)视频中记录的对象和活动。本文主要研究视频分割中的运动线索。当摄像机由于佩戴者的自然头部运动而不断移动时,基于运动的分割在以自我为中心的视频中尤其困难。我们提出了一个鲁棒的时间分割自中心视频到一个层次的运动类使用新的累积位移曲线。与瞬时运动矢量不同,即使在动态和拥挤的场景中,使用集成运动矢量的分割效果也很好。没有对潜在的场景结构做任何假设,该方法在室内和室外情况下都有效。我们使用公开可用的视频和精心编排的视频来证明我们方法的有效性。我们还提出了一种方法来检测穿戴者在以自我为中心的视频中行走部分的注视。
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