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首页> 外文期刊>Journal of visual communication & image representation >Camera network analysis for visual surveillance in electric industrial context
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Camera network analysis for visual surveillance in electric industrial context

机译:摄像机网络分析,用于电力工业环境中的视觉监控

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摘要

Society is rapidly accepting the use of a wide variety of cameras location and applications: site traffic monitoring, parking lot surveillance, car and smart space. The camera provides data every day in an analysis by an effective way. Recent advances in sensor technology manufacturing, communications and computing are stimulating. The development of new applications that can change the traditional vision system incorporating universal smart camera network was processed. This analysis of visual cues in multi camera networks makes wide applications ranging from smart home and office automation to large area surveillance and traffic surveillance. And dense Camera networks, most of which have large overlapping areas of cameras. In the view of good research, we focus on sparse camera networks. One sparse camera network using large area surveillance was developed. As few cameras as possible, most cameras do not overlap each other's field of vision. This task is challenging. Lack of knowledge of topology network, the specific changes in appearance and movement track different opinions of the target, as well as difficulties understanding complex events in a network were observed. In this review, we present a comprehensive survey of recent studies. Results to solve the problem of topology learning, object appearance modeling and global activity understanding sparse camera network were determined. In addition, some of the current open research issues are discussed. (C) 2018 Elsevier Inc. All rights reserved.
机译:社会迅速接受各种摄像机的位置和应用程序的使用:现场交通监控,停车场监控,汽车和智能空间。摄像机通过有效的方式每天提供分析数据。传感器技术制造,通信和计算领域的最新进展令人振奋。处理了可以改变结合了通用智能相机网络的传统视觉系统的新应用程序的开发。对多摄像头网络中的视觉线索进行的这种分析可用于从智能家居和办公室自动化到大面积监视和交通监视的广泛应用。密集的摄像头网络,其中大多数具有较大的摄像头重叠区域。考虑到良好的研究,我们专注于稀疏相机网络。开发了一种使用大面积监视的稀疏相机网络。尽可能少的摄像机,大多数摄像机不会彼此重叠。这项任务具有挑战性。缺乏拓扑网络知识,外观和运动的特定变化会跟踪目标的不同意见,并观察到难以理解网络中的复杂事件。在这篇评论中,我们对最近的研究进行了全面的调查。确定了解决拓扑学习,对象外观建模和全局活动理解稀疏相机网络问题的结果。此外,还讨论了一些当前的开放研究问题。 (C)2018 Elsevier Inc.保留所有权利。

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