Discriminative Color Descriptors

Rahat Khan, Joost van de Weijer, F. Khan, Damien Muselet, C. Ducottet, C. Barat
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引用次数: 128

Abstract

Color description is a challenging task because of large variations in RGB values which occur due to scene accidental events, such as shadows, shading, specularities, illuminant color changes, and changes in viewing geometry. Traditionally, this challenge has been addressed by capturing the variations in physics-based models, and deriving invariants for the undesired variations. The drawback of this approach is that sets of distinguishable colors in the original color space are mapped to the same value in the photometric invariant space. This results in a drop of discriminative power of the color description. In this paper we take an information theoretic approach to color description. We cluster color values together based on their discriminative power in a classification problem. The clustering has the explicit objective to minimize the drop of mutual information of the final representation. We show that such a color description automatically learns a certain degree of photometric invariance. We also show that a universal color representation, which is based on other data sets than the one at hand, can obtain competing performance. Experiments show that the proposed descriptor outperforms existing photometric invariants. Furthermore, we show that combined with shape description these color descriptors obtain excellent results on four challenging datasets, namely, PASCAL VOC 2007, Flowers-102, Stanford dogs-120 and Birds-200.
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鉴别颜色描述符
颜色描述是一项具有挑战性的任务,因为RGB值的巨大变化是由于场景偶然事件,如阴影,阴影,镜面,光源颜色变化和观看几何形状的变化而发生的。传统上,这一挑战是通过捕获基于物理的模型中的变化,并为不期望的变化推导不变量来解决的。这种方法的缺点是原始颜色空间中的可区分颜色集被映射到光度不变空间中的相同值。这导致颜色描述的辨别能力下降。本文采用信息论的方法对颜色进行描述。在分类问题中,我们根据颜色值的判别能力将它们聚在一起。聚类的明确目标是最小化最终表示的互信息的下降。我们发现这种颜色描述自动学习了一定程度的光度不变性。我们还表明,基于其他数据集而不是现有数据集的通用颜色表示可以获得竞争性能。实验表明,所提出的描述符优于现有的光度不变量。此外,我们表明,结合形状描述,这些颜色描述符在四个具有挑战性的数据集上获得了出色的结果,即PASCAL VOC 2007, Flowers-102, Stanford dogs-120和Birds-200。
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