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Neuro-Curvelet Model for Efficient Image Compression Using Vector Quantization

机译:使用矢量量化的有效图像压缩的神经曲线模型

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摘要

In many multimedia applications, such as image storage and transmission image, compression plays a major role. The fundamental objective of image compression is to represent an image with least number of bits of an acceptable image quality. A technique based on second-generation curvelet transform and Back-Propagation Neural Network (BPNN) has been proposed. The image compression is accomplished by approximating curvelet coefficients using BPNN. By applying BPNN into compressing curvelet coefficients, we have proposed a new compression algorithm derived from characteristic of curvelet transform. Initially, the image is translated by fast discrete curvelet transform and then based on their statistical properties; different coding and quantization schemes are employed. Differential Pulse Code Modulation (DPCM) is employed to compress low-frequency band coefficients and BPNN is used to compress high-frequency band coefficients. Subsequently, vector quantization is performed on BPNN hidden layer coefficients, thereby resulting in a reconstructed image with less degradation at higher compression ratios. For a given bits per pixel (bpp), the Curvelet Transform with Back-Propagation Neural Network (BPNN) gives better performance in terms of Peak Signal-to-Noise Ratio (PSNR) and Computation Time (CT) when compared to Wavelet Transform with BPNN and JPEG.
机译:在许多多媒体应用中,例如图像存储和传输图像,压缩起着重要作用。图像压缩的基本目标是代表具有可接受图像质量的最少位数的图像。提出了一种基于第二代curvelet变换和BP神经网络的技术。通过使用BPNN近似曲波系数来完成图像压缩。通过将BPNN应用于压缩曲线波系数,提出了一种基于曲线波变换特征的压缩算法。最初,通过快速离散Curvelet变换对图像进行平移,然后根据其统计特性进行平移;采用了不同的编码和量化方案。使用差分脉冲编码调制(DPCM)压缩低频频带系数,使用BPNN压缩高频频带系数。随后,对BPNN隐藏层系数执行矢量量化,从而生成重构图像,并在较高压缩率下具有较少的降级。对于给定的每像素位(bpp),与带有小波变换的小波变换相比,带有反向传播神经网络(BPNN)的Curvelet变换在峰值信噪比(PSNR)和计算时间(CT)方面具有更好的性能。 BPNN和JPEG。

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