通过深度学习估计人群的规模

Peng Zhao, Kazi Abir Adnan, Xinrui Lyu, Shimin Wei, R. Sinnott
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引用次数: 0

摘要

从摄影图像中自动计算人群中的人数必须解决许多潜在的问题:部分遮挡,照明差异,姿势变化以及人群中个人与相机之间距离不同导致的潜在模糊。这在大量人群中尤其如此,因为近距离计算人脸是不容易/不可能的。深度学习为解决这些问题提供了一些机会。本文描述了一个基于多任务卷积神经网络的人群计数应用的实现。这种方法使模型能够检测并逐步完善人脸的识别和计数。我们对模型进行了调整,使其适用于大规模人群中的个体计数,使用非琐碎的,因此现实和具有挑战性的人群图像。我们通过两个移动应用程序(iPhone/Android)和一个用于统计分析的web应用程序提供了该模型的实际实现的细节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating the Size of Crowds through Deep Learning
Automatically counting the number of people in a crowd from a photographic image must address numerous potential issues: partial occlusion, differences in illumination, varying poses, and potential blurring caused by the different distances from individuals in the crowd to the camera. This is especially true with large crowds where close-up counting of faces is not easy/possible. Deep learning offers some opportunities to tackle these issues. In this paper, we describe the implementation of a crowd counting application based on a Multi-task Convolutional Neural Network. This approach enables the model to detect and gradually refine the identification and counting of faces. We tailor the model to make it suitable for the counting of individuals in larger-scale crowds using non-trivial and hence realistic and challenging crowd images. We provide details of the practical realization of the model through two mobile applications (iPhone/Android) and a web application for statistical analysis.
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