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Exploiting deep neural networks for digital image compression

机译:利用深度神经网络进行数字图像压缩

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Deep neural networks (DNNs) are increasingly being researched and employed as a solution to various image and video processing tasks. In this paper we address the problem of digital image compression using DNNs. We use two different DNN architectures for image compression i.e. one employing the logistic sigmoid neurons and the other engaging the hyperbolic tangent neurons. Experiments show that the network employing the hyperbolic tangent neurons out performs the one with the sigmoid neurons. Results indicate that the hyperbolic tangent neurons not only improve the PSNR of the reconstructed images by a significant 2~5dB on average but they also converge several order of magnitude faster than the logistic sigmoid neurons.
机译:深度神经网络(DNN)越来越多地被研究和用作各种图像和视频处理任务的解决方案。在本文中,我们解决了使用DNN压缩数字图像的问题。我们使用两种不同的DNN架构进行图像压缩,即一种采用逻辑S型神经元,另一种采用双曲线正切神经元。实验表明,采用双曲正切神经元的网络与乙状结肠神经元的网络效果相同。结果表明,双曲正切神经元不仅可以将重构图像的PSNR平均提高2〜5dB,而且比逻辑S形神经元的收敛速度快几个数量级。

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