Research on Compression Performance Prediction of JPEG2000

Ruihua Liu, Yi Zhang, Quan Zhou
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引用次数: 1

Abstract

Image compression is one of the potential techniques for image processing. However, the compression also takes a certain amount of time, and some algorithms are not adapted to all images. In order to improve the processing efficiency and performance, this paper studied the relation between image characteristics and Peak Signal to Noise Ratio (PSNR) to predict the compression performance. In this paper, we adopted JPEG2000 algorithm to compress, and PSNR to evaluate the image quality. The statistics of an image contains the values of mean, variance, entropy and others. Then, we drew the relation graph between each statistic calculated and PSNR, and found the statistic which is the most closely related to PSNR. Finally, we derived an explicit expression. Experimental results show that Image Activity Measure (IAM) has the closest relation with PSNR, and the expression has the average relative error of 2% - 3.0%. Meanwhile, it can be simplified by ensuring that the formula error is unchanged basically. Furthermore, we also used other images dataset for verifying the formula. Gray images all can be well predicted for JPEG2000 algorithm when Compression Ratio (CR) is 16. It indicates that a more accurate and simpler IAM-PSNR relation we had obtained. Therefore, we can predict the compression performance before compression so as to select the appropriate compression algorithm and to provide great convenience for subsequent processing.
JPEG2000压缩性能预测研究
图像压缩是一种很有潜力的图像处理技术。但是,压缩也需要一定的时间,而且有些算法并不适用于所有的图像。为了提高压缩效率和性能,研究图像特征与峰值信噪比(PSNR)的关系,预测压缩性能。本文采用JPEG2000算法对图像进行压缩,并采用PSNR对图像质量进行评价。图像的统计量包含均值、方差、熵和其他值。然后绘制各统计量与PSNR的关系图,找出与PSNR关系最密切的统计量。最后,我们推导出一个显式表达式。实验结果表明,图像活动测度(IAM)与PSNR的关系最为密切,其表达式的平均相对误差为2% ~ 3.0%。同时,在保证公式误差基本不变的情况下进行简化。此外,我们还使用了其他图像数据集来验证公式。当压缩比(CR)为16时,JPEG2000算法可以很好地预测灰度图像。这表明我们得到了一个更准确、更简单的IAM-PSNR关系。因此,我们可以在压缩前对压缩性能进行预测,从而选择合适的压缩算法,为后续处理提供极大的方便。
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