基于dnn的高质量软传输开销降低

T. Fujihashi, T. Koike-Akino, Takashi Watanabe, P. Orlik
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引用次数: 3

摘要

软传输,即模拟传输,已被提出即使在不稳定的无线信道中也能提供优美的视频/图像质量。然而,现有的模拟方案需要大量的元数据进行功率分配和解码操作。由于速率和功率损失,它会导致大量的开销和质量下降。虽然引入高斯马尔可夫随机场(GMRF)模型可以减少开销,但模型不匹配会降低重建质量。在本文中,我们提出了一种新的模拟传输方案,同时减少开销和产生更好的重建质量。该方案使用深度神经网络(DNN)对元数据进行压缩和解压缩。具体来说,在传输之前,使用所提出的基于dnn的元数据编码器将元数据压缩成几个变量。然后在接收器上传输和解压缩变量,以实现高质量的视频/图像重建。使用测试图像的评估表明,与现有的模拟传输方案相比,我们提出的方案减少了80.0%的开销,重建质量提高了11.2 dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DNN-Based Overhead Reduction for High-Quality Soft Delivery
Soft delivery, i.e., analog transmission, has been proposed to provide graceful video/image quality even in unstable wireless channels. However, existing analog schemes require a significant amount of metadata for power allocation and decoding operations. It causes large overheads and quality degradation due to rate and power losses. Although the amount of overheads can be reduced by introducing Gaussian Markov random field (GMRF) model, the model mismatch can degrade reconstruction quality. In this paper, we propose a novel analog transmission scheme to simultaneously reduce the overheads and yield better reconstruction quality. The proposed scheme uses a deep neural network (DNN) for metadata compression and decompression. Specifically, the metadata is compressed into few variables using the proposed DNN-based metadata encoder before transmission. The variables are then transmitted and decompressed at the receiver for high-quality video/image reconstruction. Evaluations using test images demonstrate that our proposed scheme reduces overheads by 80.0% with 11.2 dB improvement of reconstruction quality compared to the existing analog transmission schemes.
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