Deep Learning Approach to Optical Camera Communication Receiver Design

Sangshin Park, Hoon Lee
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引用次数: 1

Abstract

This paper investigates a deep learning (DL) framework for designing optical camera communication (OCC) systems where a receiver is realized with optical cameras capturing images of transmit LEDs. The optimum decoding strategy is formulated as the maximum a posterior (MAP) estimation with a given received image. Due to the absence of analytical OCC channel models, it is challenging to derive the closed-form MAP detector. To address this issue, we employ a convolutional neural network (CNN) model at the OCC receiver. The proposed CNN approximates the optimum MAP detector that determines the most probable data symbols by observing an image of the OCC transmitter implemented by dot LED matrices. The supervised learning philosophy is adopted to train the CNN with labeled images. We collect training samples in real-measurement scenarios including heterogeneous background noise and distance setups. As a consequent, the proposed CNN-based OCC receiver can be applied to arbitrary OCC scenarios without any channel state information. The effectiveness of our model is examined in the real-world OCC setup with Raspberry Pi cameras. The experimental results demonstrate that the proposed CNN architecture performs better than other DL models.
基于深度学习的光学相机通信接收机设计
本文研究了一种用于设计光学相机通信(OCC)系统的深度学习(DL)框架,其中接收器由光学相机实现,捕获发射led的图像。最优解码策略是给定接收图像的最大后验估计(MAP)。由于缺乏解析的OCC通道模型,推导闭式MAP检测器具有挑战性。为了解决这个问题,我们在OCC接收器上使用卷积神经网络(CNN)模型。所提出的CNN近似于最佳MAP检测器,该检测器通过观察由点LED矩阵实现的OCC发射机的图像来确定最可能的数据符号。采用监督学习的思想对带标签图像的CNN进行训练。我们在实际测量场景中收集训练样本,包括异构背景噪声和距离设置。因此,本文提出的基于cnn的OCC接收机可以在不需要任何信道状态信息的情况下应用于任意的OCC场景。我们的模型的有效性在树莓派相机的实际OCC设置中进行了检验。实验结果表明,本文提出的CNN结构优于其他深度学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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