论文标题
无线通道中图像传输的差异自动编码方法
A Variational Auto-Encoder Approach for Image Transmission in Wireless Channel
论文作者
论文摘要
信息技术的最新进步和互联网的广泛使用已导致更轻松地访问全球数据。结果,通过嘈杂的通道传输数据是不可避免的。在通信和信息理论中,由于渠道噪声而导致的数据大小并保护数据的大小并保护其免受腐败的腐败问题。最近,受到深层神经网络在不同任务的成功的启发,已经完成了许多使用深度学习技术解决这两个问题的工作。 在本文中,我们研究了变分自动编码器的性能,并将结果与标准自动编码器进行比较。我们的发现表明,变异自动编码器比自动编码器更强大。此外,我们试图通过将基于感知的误差指标作为我们网络的损耗函数来表现重建图像的人类感知质量。为此,我们将结构相似性指数(SSIM)用作基于感知的度量,以优化所提出的神经网络。我们的实验表明,SSIM度量在视觉上可以提高接收器重建图像的质量。
Recent advancements in information technology and the widespread use of the Internet have led to easier access to data worldwide. As a result, transmitting data through noisy channels is inevitable. Reducing the size of data and protecting it during transmission from corruption due to channel noises are two classical problems in communication and information theory. Recently, inspired by deep neural networks' success in different tasks, many works have been done to address these two problems using deep learning techniques. In this paper, we investigate the performance of variational auto-encoders and compare the results with standard auto-encoders. Our findings suggest that variational auto-encoders are more robust to channel degradation than auto-encoders. Furthermore, we have tried to excel in the human perceptual quality of reconstructed images by using perception-based error metrics as our network's loss function. To this end, we use the structural similarity index (SSIM) as a perception-based metric to optimize the proposed neural network. Our experiments demonstrate that the SSIM metric visually improves the quality of the reconstructed images at the receiver.