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Knowledge-based genetic algorithm approach to quantization table generation for the JPEG baseline algorithm

机译:基于知识的遗传算法为JPEG基线算法生成量化表

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JPEG has played an important role in the image compression field for the past two decades. Quantization tables in the JPEG scheme is a key factor that is responsible for compression/quality trade-off. Finding the optimal quantization table is an open research problem. Studies recommend the genetic algorithm to generate the optimal solution. Recent reports revealed optimal quantization table generation based on a classical genetic algorithm (CGA). Although the CGA produces better results, it shows inefficiency in terms of convergence speed and productivity of feasible solutions. This paper proposes a knowledge-based genetic algorithm (KBGA), which combines the image characteristics and knowledge about image compressibility with CGA operators such as initialization, selection, crossover, and mutation for searching for the optimal quantization table. The experimental results show that the optimal quantization table generated using the proposed KBGA outperforms the default JPEG quantization table in terms of mean square error (MSE) and peak signal-to-noise ratio (PSNR) for target bits per pixel. The KBGA was also tested on a variety of images in three different bits values per pixel to show its strength. The proposed KBGA produces an average PSNR gain of 3.3% and average MSE gain of 20.6% over the default JPEG quantization table. The performance measures such as average unfitness value, likelihood of evolution leap, and likelihood of optimality are used to validate the efficacy of the proposed KBGA. The novelty of the KBGA lies in the number of generations used to attain an optimal solution as compared to the CGA. The validation results show that this proposed KBGA guarantees feasible solutions with better quality at faster convergence rates.
机译:在过去的二十年中,JPEG在图像压缩领域发挥了重要作用。 JPEG方案中的量化表是导致压缩/质量折衷的关键因素。寻找最佳量化表是一个开放的研究问题。研究建议使用遗传算法来生成最佳解。最近的报告揭示了基于经典遗传算法(CGA)的最佳量化表生成。尽管CGA产生了更好的结果,但在收敛速度和可行解决方案的生产率方面却显示出效率低下。本文提出了一种基于知识的遗传算法(KBGA),该算法将图像特征和有关图像可压缩性的知识与CGA运算符(例如初始化,选择,交叉和变异)相结合,以搜索最佳量化表。实验结果表明,使用建议的KBGA生成的最佳量化表在每像素目标位的均方误差(MSE)和峰值信噪比(PSNR)方面优于默认的JPEG量化表。 KBGA还对各种图像进行了测试,每个像素具有三个不同的位值,以显示其强度。建议的KBGA在默认JPEG量化表上产生3.3%的平均PSNR增益和20.6%的平均MSE增益。使用性能指标(例如平均不适度值,进化可能性和最优可能性)来验证所提出的KBGA的有效性。 KBGA的新颖之处在于与CGA相比,用于获得最佳解决方案的代数。验证结果表明,该提出的KBGA可以以更快的收敛速度保证可行的解决方案,并且质量更高。

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