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Random forest learning method to identify different objects using channel estimations from VLC link

机译:使用来自VLC链接的信道估计来识别不同对象的随机森林学习方法

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This paper demonstrates the feasibility of using supervised learning algorithms to identify the presence of different objects, taking advantage of the effect that they create on the VLC channel gains. For this purpose, a software-defined VLC link is implemented using a Phosphor-converted LED, whose light intensity is modulated by an Optical OFDM frame that includes synchronization words and pilot sequences for channel estimation. Actual estimated channel gains are collected in the receiver, which are used to train and assess the performance of the Random Forest classifier. The accuracy of the monitoring system is evaluated using three different objects, showing an accuracy in the order of 90% in detecting the objects, even when they take different positions when obstructing the VLC link.
机译:本文演示了使用监督学习算法来识别不同对象的存在的可行性,并利用它们对VLC通道增益产生的影响。为此,使用经过磷光转换的LED来实现软件定义的VLC链接,该LED的光强度由Optical OFDM帧调制,该帧包括同步字和用于信道估计的导频序列。实际的估计信道增益在接收机中收集,用于训练和评估随机森林分类器的性能。使用三个不同的对象评估监视系统的准确性,即使在阻塞VLC链接时它们处于不同的位置,其检测对象的准确性也达到90%左右。

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