DeepCount: Crowd Counting with WiFi via Deep Learning
Shangqing Liu, Yanchao Zhao, Fanggang Xue, Bing Chen, Xiang Chen

TL;DR
DeepCount leverages deep learning on WiFi signals to accurately estimate crowd size in multi-human environments, reducing data needs through online activity-based model correction.
Contribution
First to propose a deep learning-based WiFi crowd counting method for multi-human environments with an online learning correction mechanism.
Findings
Achieves 86.4% accuracy with deep learning alone.
Improves to 90% accuracy with activity recognition correction.
Operates effectively on commercial WiFi devices.
Abstract
Recently, the research of wireless sensing has achieved more intelligent results, and the intelligent sensing of human location and activity can be realized by means of WiFi devices. However, most of the current human environment perception work is limited to a single person's environment, because the environment in which multiple people exist is more complicated than the environment in which a single person exists. In order to solve the problem of human behavior perception in a multi-human environment, we first proposed a solution to achieve crowd counting (inferred population) using deep learning in a closed environment with WIFI signals - DeepCout, which is the first in a multi-human environment. step. Since the use of WiFi to directly count the crowd is too complicated, we use deep learning to solve this problem, use Convolutional Neural Network(CNN) to automatically extract the…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Speech and Audio Processing · Human Mobility and Location-Based Analysis
