Performance Analysis of Spatio-temporal Human Detected Keyframe Extraction

C. Priscilla, D. Rajeshwari
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Abstract

Closed circuit television (CCTV) surveillance for detecting the humans involves an expanded research analysis especially for crime scene detection due to various restraints such as crowded annotation, night footages, and rainy (noisy) clips. The main visualization of the crime scene is to recognize the person in particular obtained in all frames is a challenging task. For this occurrence, Content-Based Video Retrieval (CBVR) method refines the collection of these video frames resulting keyframes to reduce the burden of huge storage. Here, Spatio-Temporal classifiers method as an added advantage with frame differencing and edge detection method reports the human detected keyframes without the termination of background regions in order to negotiate the crime scene more efficiently. The main objective of this paper is to analyze the obtained keyframes with Human detection pointing a distinctive between Spatio-Temporal HOG-SVM and HAAR-like classifier to survey the optimum. Finally, the resulting keyframes mutated with the canny edge detection method by HOG-SVM sequel with greater accuracy level of 98.21% compared to HAAR-like classifier.
时空人体检测关键帧提取的性能分析
闭路电视(CCTV)监视监视由于拥挤的注释、夜间影像和雨中(嘈杂)的片段等各种限制,涉及到扩展的研究分析,特别是对犯罪现场的侦查。犯罪现场可视化的主要内容是在所有画面中获得对特定人物的识别,这是一项具有挑战性的任务。针对这种情况,基于内容的视频检索(CBVR)方法对这些视频帧的集合进行了细化,得到了关键帧,从而减轻了巨大的存储负担。在此,时空分类器方法作为帧差分和边缘检测方法的附加优势,在不终止背景区域的情况下报告人类检测到的关键帧,从而更有效地协商犯罪现场。本文的主要目的是对人工检测得到的关键帧进行分析,指出时空HOG-SVM与类haar分类器的区别,以找出最优算法。最后,利用HOG-SVM续集的精细边缘检测方法对关键帧进行变异检测,准确率达到了98.21%,优于类haar分类器。
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