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A natural image compression approach based on ICA and Visual Saliency Detection

机译:基于ICA的自然图像压缩方法和视力检测

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In this paper, a natural image compression method is proposed based on independent component analysis (ICA) and visual saliency detection. The proposed compression method learns basis functions trained from data using ICA to transform the image at first; and then sets percentage of the zero coefficient number in the total transforming coefficients. After that, transforming coefficients are sparser which indicates further improving of compression ratio. Next, the compression method performance is compared with the discrete cosine transform (DCT). Evaluation through both the usual PSNR and Structural Similarity Index (SSIM) measurements showed that proposed compression method is more robust to DCT. And finally, we proposed a visual saliency detection method to detect automatically the important region of image which is not or low compressed while the other regions are highly compressed. Experiment shows that the method can guarantee the quality of important region effectively.
机译:本文基于独立分量分析(ICA)和视觉显着性检测,提出了一种自然图像压缩方法。所提出的压缩方法学习使用ICA从数据训练的基本函数首先转换图像;然后在总转换系数中设置零系数数的百分比。之后,变换系数是稀疏,其指示压缩比进一步提高。接下来,将压缩方法性能与离散余弦变换(DCT)进行比较。通过通常的PSNR和结构相似性指数(SSIM)测量的评估显示,所提出的压缩方法对DCT更强大。最后,我们提出了一种视觉显着性检测方法来自动检测图像的重要区域,而不是压缩的,而另一个区域高度压缩。实验表明,该方法可以有效地保证重要地区的质量。

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