光照不变颜色纹理识别的空间滤波器选择

Bea Thai, Glenn Healey
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引用次数: 0

摘要

彩色纹理包含了大量的光谱和空间结构,可用于识别。最近的研究表明,空间滤波器提供了一种方便的方法,从彩色图像中提取光照不变的空间信息。在这篇论文中,我们讨论了如何得到最优的用于光照不变颜色纹理识别的填充。颜色纹理由一组描述滤波图像区域颜色分布的光照不变特征表示。给定一对彩色纹理,我们推导出一个空间过滤器,使这些纹理在特征空间中的距离最大化。我们提供了一种使用成对结果来获得最大化多个类之间可判别性的过滤器的方法。在不同光照条件下获得的确定性和随机颜色纹理数据库上进行的一系列实验表明,使用优化填料可以提高识别能力。
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Spatial filter selection for illumination-invariant color texture discrimination
Color texture contains a large amount of spectral and spatial structure that can be exploited for recognition. Recent work has demonstrated that spatial filters offer a convenient means of extracting illumination invariant spatial information from a color image. In this paper, we address the problem of deriving optimal fillers for illumination-invariant color texture discrimination. Color textures are represented by a set of illumination-invariant features that characterize the color distribution of a filtered image region. Given a pair of color textures, we derive a spatial filter that maximizes the distance between these textures in feature space. We provide a method for using the pair-wise result to obtain a filter that maximizes discriminability among multiple classes. A set of experiments on a database of deterministic and random color textures obtained under different illumination conditions demonstrates the improved discriminatory power achieved by using an optimized filler.
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