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WiGId: Indoor Group Identification with CSI-Based Random Forest

机译:WIGID:与基于CSI的随机林的室内群体识别

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摘要

Human identity recognition has a wide range of application scenarios and a large number of application requirements. In recent years, the technology of collecting human biometrics through sensors for identification has become mature, but this kind of method needs additional equipment as assistance, which cannot be well applied to some scenarios. Using Wi-Fi for identity recognition has many advantages, such as no additional equipment as assistance, not affected by temperature, humidity, weather, light, and so on, so it has become a hot topic of research. The methods of individual identity recognition have been more mature; for example, gait information can be extracted as features. However, it is difficult to identify small-scale (2–5) group personnel at one time, and the tasks of fingerprint storage and classification are complex. In order to solve this problem, this paper proposed a method of using the random forest as a fingerprint database classifier. The method is divided into two stages: the offline stage trains the random forest classifier through the collected training data set. In the online phase, the real-time data collected are input into the classifier to get the results. When extracting channel state information (CSI) features, multiple people are regarded as a whole to reduce the difficulty of feature selection. The use of random forest classifier in classification can give full play to the advantages of random forest, which can deal with a large number of multi-dimensional data and is easy to generalize. Experiments showed that WiGId has good recognition performance in both LOS (line of sight) and N LOS (None line of sight) environments.
机译:人类身份识别具有广泛的应用方案和大量的应用要求。近年来,通过传感器收集人体生物识别物的技术已经成熟,但这种方法需要额外的设备作为援助,这不能很好地应用于某些情况。使用Wi-Fi进行身份识别有许多优点,例如没有额外的设备作为辅助,不受温度,湿度,天气,光线等的影响,因此它已成为研究的热门话题。个人身份识别的方法更加成熟;例如,可以将步态信息作为特征提取。但是,难以一次识别小规模(2-5)个组人员,并且指纹存储和分类的任务是复杂的。为了解决这个问题,本文提出了一种使用随机林作为指纹数据库分类器的方法。该方法分为两个阶段:离线阶段通过收集的训练数据集列举随机林分类器。在在线阶段,收集的实时数据被输入到分类器中以获取结果。当提取信道状态信息(CSI)功能时,多个人被视为整体以减少特征选择的难度。在分类中使用随机林分类器可以充分发挥随机森林的优势,这可以处理大量的多维数据,易于概括。实验表明,WIGID在LOS(视线)和N LOS(无视图中)环境中具有良好的识别性能。

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