基于递归神经网络的图像压缩

Ashwini Kambar
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引用次数: 1

摘要

在本演讲中,我们描述并实现了使用递归神经网络的图像压缩,图像压缩方法是一种信息压缩,它将减少相同数量的图像传输,存储和评估,但不会丢失信息内容。这里我们用一种最常见的神经网络,即递归神经网络(RNN)来压缩图像。该结构由基于循环神经网络的编码器、二值化器和解码器系统组成。利用这种方法重建的图像比原始图像质量更好,与此同时,我们展示了激活函数,即Sigmoid, ReLU和tanh函数。并对原始图像和压缩图像的PSNR、MSE、CR、BPP和SSIM、MS-SSIM进行了比较。为此,我们在柯达数据集图像上选取图像。使用python 3.6版本的工具和一些AI功能的标准包来完成这项工作。所以这可以证明我们的深度学习实现了更好的泛化
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recurrent neural network based image compression
In this presentation we described and implemented Image compression using recurrent neural network, the compression of image method is a type of information compression that will decrease the same amount of image to be transmitted, stored and evaluated, but without losing the information content. Here we are compressing image with one of most type of neural network i.e. Recurrent Neural Network (RNN). The architecture consist of recurrent neural network based encoder, binarizer, and decoder system. Using this reconstructed the image which is having better quality than the original image and along with this here we show the activation function i.e. Sigmoid, ReLU and tanh functions. And also we evaluated PSNR, MSE, CR, BPP and SSIM, MS-SSIM, parameters for comparing original and compressed images. For this we are taken selected images on the Kodak dataset images. And this work is performed by using python 3.6 version tool with some standard packages for AI functions. So this can demonstrates that our Deep learning achieves better generalization
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