A low complex algorithm for interpolation as well as lossless compression of natural images

Nimisha Agarwal, Ayush Kumar, Juhi Bhadviya, G. Ramponi
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Abstract

This paper presents a new generic algorithm for image interpolation as well as lossless image coding. Main motivation behind the work is to reduce computational complexity involved in using Least Square Error Minimization (LS). The proposed method down samples the given image to its quarter size and then to its (1/16)th size. For each downsampled image, the least Square predictors are then obtained corresponding to pixels belonging to each bin. Thus, these predictors are used to synthetically generate a set of optimal predictors corresponding to each bin of the original image. Our proposed algorithm thus reduces 60% to 70% of computational complexity. We also observed that proposed algorithm gives insignificant loss in terms of compression ratio as compared with some of the previous works reported in literature.
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一种低复杂度的自然图像插值和无损压缩算法
本文提出了一种新的通用图像插值和无损编码算法。这项工作背后的主要动机是减少使用最小二乘误差最小化(LS)所涉及的计算复杂性。该方法将给定图像降采样到其四分之一大小,然后降采样到其(1/16)大小。对于每个下采样图像,然后获得对应于属于每个bin的像素的最小二乘预测器。因此,使用这些预测器来综合生成一组对应于原始图像的每个bin的最优预测器。因此,我们提出的算法减少了60%到70%的计算复杂度。我们还观察到,与文献中报道的一些先前的工作相比,所提出的算法在压缩比方面的损失微不足道。
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