Visual object recognition using local binary patterns and segment-based feature

Chao Zhu, Huanzhang Fu, Charles-Edmond Bichot, E. Dellandréa, Liming Chen
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引用次数: 5

Abstract

Visual object recognition is one of the most challenging problems in computer vision, due to both inter-class and intra-class variations. The local appearance-based features, especially SIFT, have gained a big success in such a task because of their great discriminative power. In this paper, we propose to adopt two different kinds of feature to characterize different aspects of object. One is the Local Binary Pattern (LBP) operator which catches texture structure, while the other one is segment-based feature which catches geometric information. The experimental results on PASCAL VOC benchmarks show that the LBP operator can provide complementary information to SIFT, and segment-based feature is mainly effective to rigid objects, which means its usefulness is class-specific. We evaluated our features and approach by participating in PASCAL VOC Challenge 2009 for the very first attempt, and achieved decent results.
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基于局部二值模式和分段特征的视觉目标识别
由于类间和类内的变化,视觉目标识别是计算机视觉中最具挑战性的问题之一。基于局部外观的特征,尤其是SIFT,由于其强大的判别能力,在这一任务中取得了很大的成功。在本文中,我们提出采用两种不同的特征来表征物体的不同方面。一种是捕捉纹理结构的局部二值模式算子(LBP),另一种是捕捉几何信息的基于片段的特征算子。PASCAL VOC基准上的实验结果表明,LBP算子可以为SIFT提供补充信息,基于片段的特征主要对刚性对象有效,即其有用性具有类特异性。我们通过参加2009年PASCAL VOC挑战赛的首次尝试来评估我们的功能和方法,并取得了不错的成绩。
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