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EDGE PRESERVING IMAGE COMPRESSION TECHNIQUE USING ADAPTIVE FEED FORWARD NEURAL NETWORK

机译:自适应前向神经网络的图像边缘压缩技术

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摘要

The aim of the paper is to develop an edge preserving image compression technique using one hidden layer feed forward neural network of which the neurons are determined adaptively. Edge detection and multi-level thresholding operations are applied to reduce the image size significantly. The processed image block is fed as single input pattern while single output pattern has been constructed from the original image unlike other neural network based techniques where multiple image blocks are fed to train the network. The paper proposes initialization of weights between the input and lone hidden layer by transforming pixel coordinates of the input pattern block into its equivalent one-dimensional representation. Initialization process exhibits better rate of convergence of the back propagation training algorithm compare to the randomization of initial weights. The proposed scheme has been demonstrated through several experiments including Lena that show very promising results in compression as well as in reconstructed images over conventional neural network based techniques available in the literature.
机译:本文的目的是使用一种隐层前馈神经网络来开发一种边缘保留图像压缩技术,该神经网络可以自适应地确定神经元。应用边缘检测和多级阈值操作可显着减小图像尺寸。与其他基于神经网络的技术不同,处理过的图像块被作为单个输入模式馈入,而单个输出模式已从原始图像构建而成,而其他基于神经网络的技术则馈入多个图像块来训练网络。本文提出了通过将输入模式块的像素坐标转换为等效的一维表示来初始化输入层和孤立隐藏层之间权重的方法。与初始权重的随机化相比,初始化过程表现出更好的收敛速度。通过包括Lena在内的多个实验已经证明了所提出的方案,该实验在基于文献的常规基于神经网络的技术上的压缩以及重构图像中均显示出非常有希望的结果。

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