Deep Learning-based Image Restoration for Low-Power and Lossy Networks

M. Maimour, Aya Sakhri, Eric Rondeau, Mohamed Omar Chida, Chaima Tounsi-Omezzine, Céline Zhang
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引用次数: 0

Abstract

Multimedia Internet of Things (IoMT) is witnessing explosive growth due to its applications in multiple areas. To cope with limited resources of low-power and lossy networks (LLN), it is common that: (i) images are captured with a degraded quality due to limited camera capabilities, (ii) a low-cost lossy compression is applied to reduce the amount of data to deliver which introduces additional distortion and (iii) transmissions are prone to losses that induce holes in the images, further degrading their quality and making them difficult to use. In this work, we propose a complete efficient encoding-transmission-reconstruction chain. In addition to the use of a low complexity image compression method, an appropriate packetization scheme is proposed. At the destination, more powerful resources are leveraged to apply deep learning models to compensate for the distortion caused by the adopted lossy compression as well as to fill in the holes induced by packet losses. The obtained results show the effectiveness of our proposal.
基于深度学习的低功耗有损网络图像恢复
多媒体物联网(IoMT)由于其在多个领域的应用而呈现爆发式增长。为了应对低功耗和有损网络(LLN)的有限资源,常见的情况是:(i)由于相机功能有限,捕获的图像质量下降;(ii)采用低成本的有损压缩来减少要传输的数据量,从而引入额外的失真;(iii)传输容易出现损耗,导致图像出现漏洞,进一步降低图像质量,使其难以使用。在这项工作中,我们提出了一个完整的高效编码-传输-重建链。除了采用低复杂度的图像压缩方法外,还提出了一种合适的分组方案。在目的地,利用更强大的资源来应用深度学习模型来补偿所采用的有损压缩造成的失真,以及填补数据包丢失引起的漏洞。得到的结果表明我们的建议是有效的。
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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