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Spatio-temporal feature-based keyframe detection from video shots using spectral clustering

机译:使用光谱聚类从视频镜头中基于时空特征的关键帧检测

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摘要

Keyframe detection is a fundamental component in approaches for large-scale mapping and scene recognition. Assuming that the detection is applied to a set of continuously captured frames, this paper presents a keyframe detector that not only considers the frame content to quantify appearance changes on the sequence, but also the temporal accumulation of evidence. If frames are described as a set of local features, our algorithm proposes a unified framework for comparing local features acquired from consecutive frames by the building of an auxiliary graph-based on the locality of features. Spectral clustering is then employed to obtain tentative graph partitions. Validated partitions will be associated to keyframes. It should be noted that the approach does not need to estimate the motion of the camera, and that the similarity measure defined within this framework can be used for any sort of feature. Experimental results using different types of visual features show the strength of our representation. Moreover, an evaluation methodology has been defined for the quantitative comparison of our keyframe detector against other similar approaches.
机译:关键帧检测是大规模映射和场景识别方法中的基本组件。假定将检测应用于一组连续捕获的帧,本文提出了一种关键帧检测器,该检测器不仅考虑帧内容以量化序列上的外观变化,而且还考虑证据的时间累积。如果将帧描述为一组局部特征,则我们的算法提出了一个统一的框架,用于通过基于特征的局部性构建辅助图来比较从连续帧中获取的局部特征。然后采用光谱聚类来获得暂定图分区。验证的分区将与关键帧关联。应当注意,该方法不需要估计摄像机的运动,并且在此框架内定义的相似性度量可用于任何种类的功能。使用不同类型的视觉特征的实验结果表明了我们的表现力。此外,已经定义了一种评估方法,用于将我们的关键帧检测器与其他类似方法进行定量比较。

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