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An efficient video summarization for surveillance system using normalized k-means and quick sort method

机译:使用归一化K-MEACE和快速排序方法的监控系统有效的视频摘要

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摘要

There has been a vast augmentation in quantity of Video Content (VC) generated amid the last some years. The Video Summarization (VS) approach is introduced for managing the VC. Prevailing VS techniques have endeavored to render the VS but the systems have Execution Time (ET) as well as condensing the video's content in domain specific manner. To triumph over such disadvantages, this paper proposed efficient VS for surveillance system using normalized k-means along with quick sort method. The proposed technique comprises eight stages, like split video into frames, pre-sampling, provide ID number, feature extraction, Feature Selection (FS), clustering, extract frames, video summary. Initially, the video frames are pre-sampled utilizing the proposed Three Step Cross Searching Algorithm (TSCS) technique. Then, give the ID number for every frame. Next, the features are extracted as of the frames. Then, the necessary features are selected using Entropy based Spider Monkey Algorithms (ESMA). In next stage, the features are grouped using Normalized K-Means (N-Kmeans) algorithm for identifying best candidate frames. Then select the minimum distance value based cluster set is the Key Frame (KF) selection. At last, the video is orderly summarized using quick sort method. Finally, in experimental evaluation the proposed work is compared with the prevailing methods. The proposed VS gave better outcome than the existing approaches.
机译:在过去的几年中,在持续几年中产生了巨大的视频内容(VC)的增量。引入了管理VC的视频摘要(VS)方法。普遍的VS技术致力于呈现VS,但系统具有执行时间(ET),以及以域特定方式缩小视频的内容。为了胜利在这种缺点上,本文提出了使用归一化k型方式的监控系统的高效与快速排序方法。所提出的技术包括八个阶段,如将拆分视频分为帧,预采样,提供ID号,特征提取,特征选择(FS),聚类,提取帧,视频摘要。最初,利用所提出的三个步骤交叉搜索算法(TSCS)技术预先采样视频帧。然后,为每个帧提供ID号。接下来,将特征提取为帧。然后,使用基于熵的蜘蛛猴算法(ESMA)选择必要的特征。在下一阶段,使用归一化K-means(n-kmeans)算法对特征进行分组,用于识别最佳候选帧。然后选择基于最小距离值的集群集是关键帧(KF)选择。最后,使用快速排序方法有序汇总视频。最后,在实验评估中,将所提出的工作与现行方法进行比较。提议的VS比现有方法产生了更好的结果。

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