Self-Controllable Super-Resolution Deep Learning Framework for Surveillance Drones in Security Applications

Soohyun Park, Yeongeun Kang, Jeman Park, Joongheon Kim
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引用次数: 4

Abstract

This paper proposes a self-controllable super-resolution adaptation algorithm in drone platforms. The drone platforms are generally used for surveillance in target network areas. Thus, super-resolution algorithms which are for enhancing surveillance video quality are essential. In surveillance drone platforms, generating video streams obtained by CCTV cameras is not static, because the cameras record the video when abnormal objects are detected. The generation of streams is not predictable, therefore, this unpredictable situation can be harmful to reliable surveillance monitoring. To handle this problem, the proposed algorithm designs superresolution adaptation. With the proposed algorithm, the shallow model which is fast and low-performance will be used if the stream queue is near overflow. On the other hand, the deep model which is highperformance and slow will be used if the queue is idle to improve the performance of super-resolution. Received on 31 May 2020; accepted on 25 June 2020; published on 30 June 2020
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用于安全应用的监视无人机的自可控超分辨率深度学习框架
提出了一种无人机平台自可控超分辨自适应算法。无人机平台一般用于目标网区域的监视。因此,提高监控视频质量的超分辨率算法是必不可少的。在监控无人机平台中,CCTV摄像机获取的视频流生成并不是静态的,因为当检测到异常物体时,摄像机会记录视频。流的产生是不可预测的,因此,这种不可预测的情况可能不利于可靠的监控监测。为了解决这一问题,该算法设计了超分辨率自适应算法。该算法在流队列接近溢出时采用速度快、性能低的浅层模型。另一方面,当队列处于空闲状态时,将采用性能优异但速度较慢的深度模型来提高超分辨率的性能。2020年5月31日收到;2020年6月25日接受;发布于2020年6月30日
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