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Real-Time Privacy Preserving Crowd Estimation Based on Sensor Data

机译:基于传感器数据的实时隐私保护人群估算

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As one of the popular topics to ensure public safety, crowd estimation has attracted lots of attentions from both industry and academia. Most of traditional crowd estimation approaches rely on sophisticated computer vision algorithms to estimate crowd based on camera data, therefore suffering from privacy issues and high deployment and data processing cost. In this paper we present a sensor fusion based approach to real-time crowd estimation based on privacy-conscious and inexpensive sensors. The approach has been implemented and verified first by a small scale deployment at our lab, and then tested based on a 3-month trial at a shopping mall in Singapore. A deep analysis has been carried out based on the data sets collected from the trial, showing promising results: (1) the data from CO2, sound pressure and infrared sensors are influential in estimating crowd levels for indoor environments, (2) Random Forest and C4.5 are identified as the more suitable supervised learning models, (3) an accuracy of 95% can be achieved by our crowd estimation system in a real scenario. In contrast to the state of the art, our approach is privacy preserving and can provide comparable estimation accuracy with lower deployment and processing cost and better applicability for large scale setups. It can be used either as an alternative solution when user privacy must be enforced or as a complementary solution to camera-based crowd estimation when privacy is less concerned because of pubic safety.
机译:作为保证公共安全的热门话题之一,人群估计吸引了行业和学术界的大量关注。大多数传统人群估算方法依赖于复杂的计算机视觉算法,以基于相机数据估计人群,因此遭受隐私问题和高部署和数据处理成本的核心。在本文中,我们基于隐私意识和廉价传感器的实时人群估算方法介绍了一种基于传感器融合方法。该方法首先通过我们实验室的小规模部署来实现和验证,然后根据新加坡购物中心的3个月试用进行测试。基于从试验中收集的数据集进行了深度分析,显示了有希望的结果:(1)来自CO2,声压和红外传感器的数据在估计室内环境中的人群水平,(2)随机森林和C4.5被确定为更合适的监督学习模型,(3)我们的人群估计系统在真实情况下可以实现95%的准确性。与现有技术相比,我们的方法是隐私保留,可以提供可比的估计精度,并提供较低的部署和处理成本以及更好地适用于大规模设置。当用户隐私时必须作为替代解决方案使用或作为基于相机的人群估计的补充解决方案,当由于耻骨安全不太关注时,它可以使用。

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