Key frames extraction for train roof video based on saliency detection

Ao Liu
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Abstract

Roof monitoring of running trains can effectively monitor the key components of the roof. In order to check the status of key components on the roof, it is necessary to check the roof surveillance video, which is often time-consuming and labor-intensive. In order to improve the efficiency of status inspection of key components, this paper proposes a key frame extraction algorithm for roof video surveillance based on saliency detection. The algorithm first designs a saliency detection network, which is used to extract candidate video frames containing key components. Then, through feature clustering analysis, the candidate video frames are classified into frame sequences containing components attached different classes, and finally the correlation is calculated for all frames in each frame sequence and the frame with the largest correlation corresponds to the key frame of the current frame sequence.
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基于显著性检测的列车车顶视频关键帧提取
运行列车顶板监测可以有效地监测顶板的关键部件。为了检查屋顶上关键部件的状态,必须检查屋顶监控视频,这往往是费时费力的。为了提高关键部件状态检测的效率,本文提出了一种基于显著性检测的屋顶视频监控关键帧提取算法。该算法首先设计了一个显著性检测网络,用于提取包含关键成分的候选视频帧。然后,通过特征聚类分析,将候选视频帧分类为包含不同类别分量的帧序列,最后计算每个帧序列中所有帧的相关性,相关性最大的帧对应当前帧序列的关键帧。
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