Effects of Training Images on CNN-Based Demodulation for Digital Signage and Image Sensor-Based VLC

Yuki Iyoda, Kentaro Kobayashi, W. Chujo
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引用次数: 1

Abstract

This paper studies a visible light communication (VLC) system using a digital signage and an image sensor. The authors have focused on the demodulation part of the communication system, which modulates data signals without disturbing the visual information on the digital signage, and have proposed a novel concept that uses machine learning to demodulate the data signals from images received by the image sensor. However, it has not been fully clarified which parameters of the training images contribute to the performance of the machine learningbased demodulation. This paper extends the convolutional neural network (CNN)-based demodulation method and clarifies how much the number of parallelized data signals and the number of patterns of data signals in the training images contribute to the demodulation performance. The results show that the performance improves with the number of parallelized data signals in the training images, and that half of the signal patterns are sufficient for learning.
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训练图像对基于cnn的数字标牌解调和基于图像传感器的VLC的影响
本文研究了一种基于数字标牌和图像传感器的可见光通信(VLC)系统。作者专注于通信系统的解调部分,该部分在不干扰数字标牌上的视觉信息的情况下调制数据信号,并提出了一个使用机器学习来解调图像传感器接收到的图像中的数据信号的新概念。然而,训练图像的哪些参数对基于机器学习的解调性能有贡献还没有完全明确。本文扩展了基于卷积神经网络(CNN)的解调方法,阐明了训练图像中并行化数据信号的数量和数据信号模式的数量对解调性能的影响。结果表明,随着训练图像中并行化数据信号的数量增加,性能有所提高,并且有一半的信号模式足以进行学习。
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