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Color Edge Saliency Boosting using Natural Image Statistics

机译:使用自然图像统计数据提高色彩边缘显着性

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摘要

State of the art methods for image matching, content-based retrieval and recognition use local features. Most of these still exploit only the luminance information for detection. The color saliency boosting algorithm has provided an efficient method to exploit the saliency of color edges based on information theory. However, during the design of this algorithm, some issues were not addressed in depth: (1) The method has ignored the underlying distribution of derivatives in natural images. (2) The dependence of information content in color-boosted edges on its spatial derivatives has not been quantitatively established. (3) To evaluate luminance and color contributions to saliency of edges, a parameter gradually balancing both contributions is required. We introduce a novel algorithm, based on the principles of independent component analysis, which models the first order derivatives of color natural images by a generalized Gaussian distribution. Furthermore, using this probability model we show that for images with a Laplacian distribution, which is a particular case of generalized Gaussian distribution, the magnitudes of color-boosted edges reflect their corresponding information content. In order to evaluate the impact of color edge saliency in real world applications, we introduce an extension of the Laplacian-of-Gaussian detector to color, and the performance for image matching is evaluated. Our experiments show that our approach provides more discriminative regions in comparison with the original detector.
机译:用于图像匹配,基于内容的检索和识别的最新方法使用局部特征。其中大多数仍仅利用亮度信息进行检测。颜色显着性增强算法提供了一种基于信息论的有效利用色彩边缘显着性的方法。然而,在该算法的设计过程中,并未深入解决一些问题:(1)该方法忽略了自然图像中导数的基本分布。 (2)尚未定量建立色彩增强边缘中信息内容对其空间导数的依赖性。 (3)为了评估亮度和颜色对边缘显着性的贡献,需要一个逐渐平衡这两个贡献的参数。我们介绍了一种基于独立成分分析原理的新颖算法,该算法通过广义高斯分布对彩色自然图像的一阶导数进行建模。此外,使用这种概率模型,我们表明,对于具有Laplacian分布的图像(这是广义高斯分布的一种特殊情况),颜色增强边缘的大小反映了其相应的信息内容。为了评估颜色边​​缘显着性在实际应用中的影响,我们引入了Laplacian-of-Gaussian检测器对颜色的扩展,并评估了图像匹配的性能。我们的实验表明,与原始检测器相比,我们的方法提供了更多的区分区域。

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