Video scene segmentation by improved visual shot coherence

T. H. Trojahn, R. Goularte
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引用次数: 6

Abstract

Nowadays, there a increasing interest in video scene segmentation due huge amount of videos available through services like YouTube. Although there are some techniques which obtain relatively good precision and recall values when segmenting the video in scenes, they are somewhat limited because the high computational cost. A well know technique to accomplish video scene segmentation is the shot coherence model, which presents lower precision and recall than state of art methods, like machine learning and multimodality, but stands out for being simple. The improvement of the techniques based on shot coherence models could be beneficial to these state of the art segmentation methods. That way, this paper presents a new technique for scene segmentation using shot coherence and optical flow features. The technique is presented and evaluated through a series of precision, recall and F1 values, obtaining results close or even better of those obtained by related works.
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改进视觉镜头连贯性的视频场景分割
如今,由于YouTube等服务提供了大量视频,人们对视频场景分割的兴趣越来越大。虽然有一些技术在场景视频分割中获得了较好的精度和召回率值,但由于计算成本高,它们受到一定的限制。完成视频场景分割的一种众所周知的技术是镜头相干模型,它比机器学习和多模态等最先进的方法具有更低的精度和召回率,但因其简单而脱颖而出。基于镜头相干性模型的图像分割技术的改进将有助于这些技术的发展。因此,本文提出了一种利用镜头相干性和光流特征进行场景分割的新技术。通过一系列的精密度、召回率和F1值对该技术进行了介绍和评价,得到了接近甚至更好的结果。
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