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Multi-scale Color Local Binary Patterns for Visual Object Classes Recognition

机译:用于Visual Object类识别的多尺度颜色局部二进制模式

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The Local Binary Pattern (LBP) operator is a computationally efficient yet powerful feature for analyzing local texture structures. While the LBP operator has been successfully applied to tasks as diverse as texture classification, texture segmentation, face recognition and facial expression recognition, etc., it has been rarely used in the domain of Visual Object Classes (VOC) recognition mainly due to its deficiency of power for dealing with various changes in lighting and viewing conditions in real-world scenes. In this paper, we propose six novel multi-scale color LBP operators in order to increase photometric invariance property and discriminative power of the original LBP operator. The experimental results on the PASCAL VOC 2007 image benchmark show significant accuracy improvement by the proposed operators as compared with both the original LBP and other popular texture descriptors such as Gabor filter.
机译:本地二进制模式(LBP)操作员是计算有效的且强大的功能,用于分析本地纹理结构。虽然LBP运算符已成功应用于任务,作为纹理分类,纹理分割,面部识别和面部表情等多样化,但它已经很少在视觉对象类(VOC)识别领域中主要用于其缺陷在现实世界场景中处理照明和观察条件的各种变化的权力。在本文中,我们提出了六种新型多尺度彩色LBP运算符,以提高原始LBP运营商的光度不变性特性和辨别力。 Pascal VOC 2007图像基准的实验结果显示了所提出的操作员的显着改进,与原始LBP和其他流行纹理描述符(如Gabor滤波器)相比。

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