Unimodality of MBType frame different metrics for efficient Key Frame Extraction in Video

S. Vignesh, V. Vaidehi, M. Kannan
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引用次数: 1

Abstract

Key Frame Extraction (KFE) is an important block involved with any search process on large scale video logs. KFE has wide applications in fields like Content based retrieval systems, Video Summarization, compression and Video content management. The conventional algorithms exploit the pixel similarities or histogram distributions between frames of video, ignoring the key frame metric information in surveillance videos. The proposed Unimodality of MBType (UMB-KFE) method is motivated by the availability of frame difference metric information of Macro Blocks (I, P, B Frames) and ability to distribute them in a Unimodal distribution form. The difference metrics are further post processed with L2-norm upon the P-frames for efficient reduction. Real merit of the proposed system is that it does not need shot identification, segmentation or context information separation for KFE. Finally, experiments are performed by evaluating the proposed method upon benchmark video datasets and synthetic datasets. A comparison of the results obtained with ground truth information and with state-of-the-art techniques proves that the proposed method is at par in performance by extracting non-repetitive key frames.
基于MBType帧不同度量的单模性,实现视频中关键帧的高效提取
关键帧提取(KFE)是大规模视频日志搜索过程中的一个重要环节。KFE在基于内容的检索系统、视频摘要、压缩和视频内容管理等领域有着广泛的应用。传统算法利用视频帧之间的像素相似性或直方图分布,忽略了监控视频中的关键帧度量信息。提出的MBType (mb - kfe)方法的单峰性是由于宏块(I, P, B帧)帧差度量信息的可用性以及它们以单峰分布形式分布的能力。差分指标在p帧上进一步进行l2范数后处理,以达到有效约简的目的。该系统的真正优点是不需要对KFE进行镜头识别、分割或上下文信息分离。最后,在基准视频数据集和合成数据集上进行了实验。与地面真实信息和最新技术获得的结果进行比较,证明所提出的方法在提取非重复关键帧的性能上是相同的。
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