Trade-off between Image Quality and Computational Complexity: Image Resizing Perspective

Iwan Setiawan, Rico Dahlan, A. Basuki, Heru Susanto, D. Rosiyadi
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引用次数: 0

Abstract

This study proposed a new approach for resizing image deal with quality and computational complexity. Here, previous methods in image resizing do analytical works to approximate the original picture element (pixel) or to remove high frequency coefficients. For images with huge pixel, this will result in computational burden due to number of multiplication and addition in the synthesized formula. Instead of the works, this study proposed a new approach in removing the coefficients by exploiting the second-order block matrix without the need to synthesize the formula. It can be called a fully numeric image resizing method. The result shows that the resized version of original image has peak signal to noise ratio (PSNR) equal to 35.24 dB for resizing the famous Lena image which means compareable to the conventional which has PSNR value around 35 dB but here deriving analytical formula is not required. Reducing computational complexity is also achieved as expected with result only 16 addition involved with no multiplication required. This is lower than the conventional in term of computational complexity. Overall, the proposed method has a good balance for both performances than the conventional approaches.
图像质量和计算复杂度之间的权衡:图像大小调整视角
本研究提出了一种处理图像质量和计算复杂度的调整图像大小的新方法。在这里,以前的图像调整方法进行分析工作,以近似原始图像元素(像素)或去除高频系数。对于大像素的图像,由于合成公式中乘法和加法的次数多,计算量大。本文提出了一种利用二阶分块矩阵去除系数的新方法,而不需要合成公式。它可以称为全数值图像调整方法。结果表明,对著名的Lena图像进行调整后,原始图像的峰值信噪比(PSNR)为35.24 dB,这意味着与PSNR值在35 dB左右的常规图像相当,但这里不需要推导解析公式。降低计算复杂性也如预期的那样实现,结果只涉及16个加法,不需要乘法。这比传统的计算复杂度要低。总的来说,与传统方法相比,所提出的方法在这两种性能上有很好的平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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