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Efficient Descriptors of Hue Distributions from Kernel Density Estimators and Fourier Transforms

机译:核密度估计器和傅立叶变换对色相分布的有效描述

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Many color-based image retrieval systems define the similarity (with regard to color) between two images as the similarity between the probability distributions of the color vectors in the images. These probability distributions are almost always estimated by histograms. Histograms have however the disadvantage that they are discontinuous and their form depends on the selection of the histogram bins. Results from probability theory and statistics show that kernel-based estimators are superior to the histogram in many respects. Previous studies in image retrieval have however shown that a naive application of kernel-based estimators provide no improvement in retrieval performance. In this paper we first motivate why a combination of kernel-based estimators and Fourier transform theory provides good estimators of the similarity of hue-distributions. We then show that Fourier coefficients provide efficient descriptors of the probability distributions and that these Fourier coefficients can be directly used to compute the similarity between the hue distributions of images. Next we describe two methods to select the most relevant Fourier coefficients for image retrieval. We will argue that in image retrieval we should not select those Fourier coefficients that are most important for the description of the probability distributions themselves but that we should select those coefficients that are most important in the estimation of the difference between similar distributions. In the experimental part of the paper we describe the performance of these kernel-based methods when they are applied to image retrieval tasks involving the MPEG7 image database. We will show that the retrieval performance of the kernel based method is better than the performance of histogram methods and we will show that the retrieval performance is also relatively insensitive to the choice of the Kernel and the width of the Kernel.
机译:许多基于颜色的图像检索系统将两个图像之间的相似性(关于颜色)定义为图像中颜色矢量的概率分布之间的相似性。这些概率分布几乎总是通过直方图来估计的。但是,直方图的缺点是它们是不连续的,并且其形式取决于直方图块的选择。概率论和统计结果表明,基于核的估计器在许多方面都优于直方图。然而,先前在图像检索中的研究表明,基于内核的估计器的简单应用并没有改善检索性能。在本文中,我们首先提出动机,为什么将基于核的估计量与傅立叶变换理论相结合为色相分布的相似性提供良好的估计量。然后,我们表明傅立叶系数提供了概率分布的有效描述符,并且这些傅立叶系数可直接用于计算图像色调分布之间的相似度。接下来,我们描述两种选择最相关的傅里​​叶系数进行图像检索的方法。我们将争辩说,在图像检索中,我们不应该选择对于描述概率分布本身最重要的那些傅立叶系数,而应该选择对相似分布之间的差异进行估计最重要的那些傅立叶系数。在本文的实验部分中,我们描述了将这些基于内核的方法应用于涉及MPEG7图像数据库的图像检索任务时的性能。我们将显示基于核的方法的检索性能优于直方图方法的性能,并且将显示检索性能对内核的选择和内核宽度也相对不敏感。

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