基于卷积神经网络的人群计数模型

Akshita Patwal, M. Diwakar, Vikas Tripathi, Prabhishek Singh
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引用次数: 2

摘要

人群计数被用于公共安全,有效管理选举或朝圣,音乐会的人群。最近在2022年1月,印度的一座寺庙发生了踩踏事件,由于过度拥挤,许多人丧生。此外,为了阻止大流行的传播,在公共场所进行人群统计被证明是有益的。手动计数是一项繁琐的任务,并且可能产生错误的结果,因为它需要很长时间。在拥挤的照片中,随着画面中人的密度增加,物体似乎部分地围绕在一起。人群计数有局限性,比如遮挡和背景杂乱。为了解决这一困难,早期的方法依赖于标记复杂的密度图来隐式地理解尺度变化。数据准备可能会耗费大量时间,并且由于缺乏训练数据,训练这些深度模型可能会出现问题。因此,我们提出了另一种新的人群计数方法。本文提出的模型使用基于ResNet50的卷积神经网络对给定图像中的人数进行计数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crowd Counting Model Using Convolutional Neural Network
Crowd Counting is being used for public safety, effective management of the crowd in elections or pilgrimages, music concerts. Recently there was a stampede in January 2022 in a temple in India where due to overcrowd many people were killed. Also, to stop the spread of pandemic crowd counting is proving to be beneficial in public places. Counting manually is a tedious task and it may produce false results, since it takes a long time. In crowded photos, objects appear to be partially surrounding each other as the density of people increase in the frame. Crowd counting is having limitations such as occlusion and background clutter. To solve this difficulty, earlier approaches relied on labelling complex density maps to understand the scale variation implicitly. Data preparation can be time expensive, and training these deep models might be problematic owing to a shortage of training data. As a result, we suggest an alternate and new method for crowd counting. The proposed model in this paper counts the number of people in the given image using a convolutional neural network based on ResNet50.
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