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DNN-Based Simultaneous Screen-to-Camera and Screen-to-Eye Communications

机译:基于DNN的同时从屏幕到摄像机和从屏幕到眼睛的通信

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Simultaneous screen-to-camera and screen-to-eye communications, i.e., watermarking, have been proposed in visible light communications. The main purpose of such communications is to provide many data bits for camera devices and visual information for human eyes by using a common displayed image. To this end, the existing studies leverage the capability discrepancy and distinctive features between the human vision system and camera devices. However, the existing techniques mainly require high refresh rates in both screen and camera devices to achieve better throughput while keeping high visual quality. In this paper, we propose a novel transmission scheme for efficient simultaneous screen-to- camera and screento- eye communications without a need of high refresh rates. Specifically, we use deep convolutional neural networks (DCNN)- based watermark encoder and decoder to embed many bits into high-quality images, and then to maximize throughput from the bit-embedded image. With end-to-end adversarial learning, the encoder networks learn a mapping function to embed digital data into an original image based on a perceptual loss function while the decoder networks also learn a mapping function from the bitembedded image to the data bits based on a cross-entropy loss function. From the evaluations, we show that the proposed watermark encoding and decoding networks yield high throughput from the bit-embedded images compared with a simple DCNNbased watermarking. In addition, the bit-embedded images on the screen achieve high quality for human perception.
机译:在可见光通信中已经提出了同时进行的屏幕到相机和屏幕到眼睛的通信,即加水印。这种通信的主要目的是通过使用共同显示的图像为相机设备提供许多数据位,并为人眼提供视觉信息。为此,现有研究利用了人类视觉系统和摄像设备之间的能力差异和独特功能。然而,现有技术主要在屏幕和照相机设备中都需要高刷新率,以在保持高视觉质量的同时实现更好的吞吐量。在本文中,我们提出了一种新颖的传输方案,无需高效的刷新率,即可实现高效的同时进行的屏幕到摄像机和屏幕到眼睛的通信。具体来说,我们使用基于深度卷积神经网络(DCNN)的水印编码器和解码器将许多位嵌入到高质量的图像中,然后从位嵌入的图像中最大化吞吐量。通过端到端对抗学习,编码器网络学习基于感知损失函数的映射功能,将数字数据嵌入到原始图像中,而解码器网络也基于感知损失函数,从比特嵌入的图像到数据位学习映射功能。交叉熵损失函数。从评估中,我们表明,与基于DCNN的简单水印相比,所提出的水印编码和解码网络可从位嵌入图像中获得高吞吐量。另外,屏幕上的位嵌入图像可实现高质量的人眼感知。

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