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A novel squeeze YOLO-based real-time people counting approach

机译:一种新的挤压Yolo基实时人数计算方法

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摘要

Real-time people counting based on videos is one of the most popular projects in the construction of smart cities. To develop an accurate people counting approach, deep learning can be used as it greatly improves the accuracy of machine learning-based approaches. To this end, we have previously proposed an accurate you only look once (YOLO)-based people counting approach, dubbed YOLO-PC. However, the model of YOLO-PC was very large with an excessive number of parameters, thus it requires large storage space on the device and makes transmission on internet a time consuming task. In this paper, a new real-time people counting method named as squeeze YOLO-based people counting (S-YOLO-PC) is proposed. S-YOLO-PC uses the fire layer of SqueezeNet to optimise the network structure, which reduces the number of parameters used in the model without decreasing its accuracy. Based on the obtained the experimental results, S-YOLO-PC reduces the number of model parameters by 11.5% and 9% compared to YOLO and YOLO-PC, respectively. S-YOLO-PC can also detect and count people with 41 frames per second (FPS) with the average precision (AP) of person of 72%.
机译:基于视频的实时人数是智能城市建设中最受欢迎的项目之一。为了制定准确的人数,可以使用深度学习,因为它大大提高了基于机器学习的方法的准确性。为此,我们之前提出了一个准确的你只看一次(Yolo)的人数计算方法,被称为Yolo-PC。然而,YOLO-PC的模型非常大,参数过多,因此它需要在设备上进行大的存储空间,并在互联网上传输耗时的任务。在本文中,提出了一个名为Creeze Yolo基数计数(S-YOLO-PC)的新实时人数。 S-YOLO-PC使用挤压ZENET的火层来优化网络结构,从而减少模型中使用的参数数而不降低其准确性。基于所获得的实验结果,S-YOLO-PC分别与Yolo和Yolo-PC相比将模型参数的数量减少11.5%和9%。 S-Yolo-PC还可以检测和计算每秒41帧(FPS)的人,平均精度(AP)为72%。

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