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Hierarchical extreme learning machine based image denoising network for visual Internet of Things

机译:基于分层极端学习机的图像去噪网络

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In the visual Internet of Things (VIoT), imaging sensors must achieve a balance between limited bandwidth and useful information when images contain heavy noise. In this paper, we address the problem of removing heavy noise and propose a novel hierarchical extreme learning machine-based image denoising network, which comprises a sparse auto-encoder and a supervised regression. Due to the fast training of a hierarchical extreme learning machine, an effective image denoising system that is robust for various noise levels can be trained more efficiently than other denoising methods, using a deep neural network. Our proposed framework also contains a non-local aggregation procedure that aims to fine-tune noise reduction according to structural similarity. Compared to the compression ratio in noisy images, the compression ratio of denoised images can be dramatically improved. Therefore, the method can achieve a low communication cost for data interactions in the VIoT. Experimental studies on images, including both hand-written digits and natural scenes, have demonstrated that the proposed technique achieves excellent performance in suppressing heavy noise. Further, it greatly reduces the training time, and outperforms other state-of-the-art approaches in terms of denoising indexes for the peak signal-to-noise ratio (PSNR) or the structural similarity index (SSIM). (C) 2018 Published by Elsevier B.V.
机译:在视觉互联网(VIOT)中,当图像包含大噪声时,成像传感器必须在有限带宽和有用信息之间实现平衡。在本文中,我们解决了删除了重噪声的问题,并提出了一种基于分层极端学习机的图像去噪网络,其包括稀疏的自动编码器和监督回归。由于分层极端学习机的快速训练,使用深神经网络,可以比其他去噪方法更有效地培训对各种噪声水平稳健的有效图像去噪系统。我们所提出的框架还包含非本地聚合程序,旨在根据结构相似性进行微调降噪。与噪声图像中的压缩比相比,可以显着提高去噪图像的压缩比。因此,该方法可以实现冒险中的数据交互的低通信成本。关于图像的实验研究,包括手写的数字和自然场景,已经证明了所提出的技术在抑制重噪声方面实现了出色的性能。此外,它大大减少了训练时间,并且在峰值信噪比(PSNR)或结构相似性指数(SSIM)的衡量标准方面优于其他最先进的方法。 (c)2018由elsevier b.v发布。

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