Crowd Counting Using Region Convolutional Neural Networks

N. Akbar, E. C. Djamal
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Abstract

Monitoring the number of people is essential to estimate the level of crowds in a public area, especially during this Covid19 pandemic. CCTV recording needs to process for counting the number of people in a crowd at a specific time. However, counting people on CCTV is not easy. It can be approached by detecting a specific object from a compilation of frames with a certain size that makes up the image. This study proposed the Faster Region-Convolutional Neural Networks (Faster R-CNN) method with ResNet50 to count the number of people in a crowd from the low-resolution image from CCTV. The research gave that crowd counting with the Faster RCNN needs consideration to choose appropriate architecture. ResNet50 architecture provided an accuracy of 97.20% in detecting the number of people in the crowd image. It was compared to other detectors based on previous studies with the same dataset and gave the highest accuracy. Region Proposal Networks makes Faster RCNN robust. Although the various number of people in the crowd image, quality of the dataset, and anchor aspect ratio values provide good results improve accuracy. Besides, the appropriate learning parameters make the method performance more optimal. This configuration can be applied to real-time testing so that it gave the best results of 86% using Faster RCNN and ResNet50.
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基于区域卷积神经网络的人群计数
监测人数对于估计公共区域的人群水平至关重要,特别是在2019冠状病毒病大流行期间。CCTV录像需要处理特定时间人群中的人数。然而,在中央电视台统计人数并不容易。它可以通过从构成图像的具有一定大小的帧的汇编中检测特定对象来实现。本研究利用ResNet50提出Faster Region-Convolutional Neural Networks (Faster R-CNN)方法,从CCTV低分辨率图像中统计人群人数。研究表明,使用更快的RCNN进行人群计数需要考虑选择合适的架构。ResNet50架构在人群图像中检测人数的准确率为97.20%。将其与基于相同数据集的先前研究的其他探测器进行比较,并给出了最高的准确性。区域提议网络实现更快的RCNN鲁棒性。虽然人群图像中的人数不同,数据集的质量和锚长宽比值提供了良好的结果,提高了准确性。此外,适当的学习参数使该方法的性能更优。这种配置可以应用于实时测试,因此使用更快的RCNN和ResNet50可以获得86%的最佳结果。
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