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Compression Quality Prediction Model for JPEG2000

机译:JPEG2000的压缩质量预测模型

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摘要

A compression quality prediction model is proposed for grey images coding with JPEG2000. With this model, the compression quality (PSNR) could be estimated according to the given compression ratio (CR) and the image activity measures (IAM) without coding images. The image activity measure is the weighted sum of the IAM values based on the 1-pixel-distance and 2-pixel-distance gradients along horizontal and vertical directions. We have shown that IAM is a function of the image variance and autocorrelation coefficients. Based on Shannon's rate-distortion theorem, a theoretical justification is provided for the correlation of IAM with PSNR. Experimental results show that the prediction error is lower than 1 dB for more than 70% sample images when CR is higher than 15. The prediction error is less than 2 dB for over 90% images. This prediction performance is acceptable for general applications.
机译:提出了一种用于JPEG2000灰度图像编码的压缩质量预测模型。使用此模型,可以根据给定的压缩率(CR)和图像活动性度量(IAM)估算压缩质量(PSNR),而无需对图像进行编码。图像活动度量是基于沿水平和垂直方向的1像素距离和2像素距离梯度的IAM值的加权和。我们已经证明,IAM是图像方差和自相关系数的函数。基于香农率失真定理,为IAM与PSNR的相关性提供了理论依据。实验结果表明,当CR大于15时,对于70%以上的样本图像,预测误差小于1 dB。对于90%以上的图像,预测误差小于2 dB。这种预测性能对于一般应用是可以接受的。

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