基于coiflet、人工神经网络和预测编码的混合图像压缩方法

S. Sridhar, P. R. Kumar, K. Ramanaiah, D. Nataraj
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引用次数: 2

摘要

结合小波Coiflet滤波函数、预测编码(差分脉冲编码调制- dpcm)和神经网络的优点,结合量化和霍夫曼编码技术消除像素间冗余、心理视觉冗余和编码冗余,对混合图像压缩系统进行了讨论和分析,以获得更好的客观保真度指标。人工神经网络是自适应的,即它们可以在没有任何功能模型规范的情况下根据数据进行自我调整,它们在架构上是容错的。另一方面,小波(通过选择)计算简单,并为高分辨率图像提供良好的压缩比,特别是当DPCM消除信息中的冗余时。将初始选择的小波(本例中为Coiflet5)应用于输入图像进行两级分解,生成低频和高频系数的七个波段。采用DPCM技术对低频段1系数进行压缩,剩余频段系数采用人工神经网络进行压缩。获得的指标:峰值信噪比(PSNR)、均方误差(MSE)和压缩比(CR)被制成表格进行比较分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coiflets, artificial neural networks and predictive coding based hybrid image compression methodology
Hybrid image compression system is discussed and analyzed for better objective fidelity metrics combining the advantages of Coiflet filter functions of wavelets, Predictive Coding (Differential Pulse Code Modulation-DPCM) and neural networks in addition to quantization and Huffman encoding techniques to eliminate the interpixel, psychovisual redundancy and coding redundancy. Artificial neural networks are self adaptive i.e. they can adjust themselves to data without any specification of the functional model they are fault tolerant by architecture. Wavelets (by choice) on the other hand are computationally simple and provide good compression ratios for high resolution images especially while DPCM removes redundancy in the information. Initially selected wavelet of choice (Coiflet5 in this case) is applied on the input image for two level decomposition generating seven bands of low frequency and high frequency coefficients. The low frequency band 1 coefficients are compressed with DPCM technique while the remaining bands of coefficients are compressed with artificial neural networks. Metrics obtained: Peak Signal to Noise Ratio (PSNR) Mean Square Error (MSE) and Compression Ratio (CR) are tabulated for comparative analysis.
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