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YOLO Based Real-Time Human Detection for Smart Video Surveillance at the Edge

机译:基于YOLO基于智能视频监控的实时人性检测

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Recently, smart video surveillance at the edge has become a trend in developing security applications since edge computing enables more image processing tasks to be implemented on the decentralised network note of the surveillance system. As a result, many security applications such as behaviour recognition and prediction, employee safety, perimeter intrusion detection and vandalism deterrence can minimise their latency or even process in real-time when the camera network system is extended to a larger degree. Technically, human detection is a key step in the implementation of these applications. With the advantage of high detection rates, deep learning methods have been widely employed on edge devices in order to detect human objects. However, due to their high computation costs, it is challenging to apply these methods on resource limited edge devices for real-time applications. Inspired by the You Only Look Once (YOLO), residual learning and Spatial Pyramid Pooling (SPP), a novel form of real-time human detection is presented in this paper. Our approach focuses on designing a network structure so that the developed model can achieve a good trade-off between accuracy and processing time. Experimental results show that our trained model can process 2 FPS on Raspberry PI 3B and detect humans with accuracies of 95.05 % and 96.81 % when tested respectively on INRIA and PENN FUDAN datasets. On the human COCO test dataset, our trained model outperforms the performance of the Tiny-YOLO versions. Additionally, compare to the SSD based L-CNN method, our algorithm achieves better accuracy than the other method.
机译:最近,边缘的智能视频监控已成为开发安全应用程序的趋势,因为边缘计算能够在监视系统的分散网络音符中实现更多的图像处理任务。因此,许多安全应用程序,例如行为识别和预测,员工安全性,周边入侵检测和破坏威慑力可以在相机网络系统扩展到更大程度的时期实时地实现其延迟甚至过程。从技术上讲,人类检测是实现这些应用程序的关键步骤。凭借高检测率的优点,在边缘设备上广泛使用深度学习方法以检测人物。但是,由于其高计算成本,在资源有限边缘设备上应用这些方法是具有挑战性的,以进行实时应用。由您的灵感仅仅看一次(YOLO),剩余学习和空间金字塔池(SPP),本文提出了一种新颖的实时人体检测。我们的方法侧重于设计网络结构,以便开发的模型可以在精度和处理时间之间实现良好的权衡。实验结果表明,我们的培训模型可以在覆盆子PI 3B上处理2个FPS,并在初创人和宾夕法尼亚州Fudan数据集上检测了95.05%和96.81%的高精度的人。在人类Coco测试数据集上,我们训练的模型优于Tiny-Yolo版本的性能。此外,与基于SSD的L-CNN方法相比,我们的算法比其他方法实现了更好的精度。

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