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Parallel Key Frame Extraction for Surveillance Video Service in a Smart City

机译:智慧城市中监控视频服务的并行关键帧提取

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摘要

Surveillance video service (SVS) is one of the most important services provided in a smart city. It is very important for the utilization of SVS to provide design efficient surveillance video analysis techniques. Key frame extraction is a simple yet effective technique to achieve this goal. In surveillance video applications, key frames are typically used to summarize important video content. It is very important and essential to extract key frames accurately and efficiently. A novel approach is proposed to extract key frames from traffic surveillance videos based on GPU (graphics processing units) to ensure high efficiency and accuracy. For the determination of key frames, motion is a more salient feature in presenting actions or events, especially in surveillance videos. The motion feature is extracted in GPU to reduce running time. It is also smoothed to reduce noise, and the frames with local maxima of motion information are selected as the final key frames. The experimental results show that this approach can extract key frames more accurately and efficiently compared with several other methods.
机译:监视视频服务(SVS)是智慧城市中提供的最重要的服务之一。对于使用SVS提供有效的设计监视视频分析技术而言,这非常重要。关键帧提取是实现这一目标的一种简单而有效的技术。在监控视频应用中,关键帧通常用于总结重要的视频内容。准确有效地提取关键帧非常重要且必不可少。提出了一种新颖的方法,基于GPU(图形处理单元)从交通监控视频中提取关键帧,以确保高效和高精度。对于关键帧的确定,运动是呈现动作或事件(尤其是在监视视频中)的更显着特征。运动功能提取到GPU中以减少运行时间。还可以对其进行平滑处理以减少噪声,并选择具有局部最大运动信息的帧作为最终关键帧。实验结果表明,与其他几种方法相比,该方法可以更准确,更有效地提取关键帧。

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