基于LBP和韦伯定律描述子特征的人工结构检测CRF模型

S. Behera, P. Nanda
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引用次数: 1

摘要

本文提出了一种结合局部二值模式(LBP)和韦伯定律描述子(WLD)特征的条件随机场(CRF)模型,用于自然场景中建筑物等人造结构的检测。在自然场景中,结构可能具有纹理属性,或者对象的某些部分可能作为纹理出现。在特征空间中进行了CRF模型学习。尺度内LBP特征和尺度间WLD特征处理了结构的空间相关性。CRF模型的学习问题是在伪似然框架中提出的,而推断标签是通过最大化特征空间的后验分布来获得的。使用迭代条件模式算法(ICM)来获取标签。通过对多幅图像的测试,发现该算法在检测精度上优于Kumar算法。
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LBP and Weber law descriptor feature based CRF model for detection of man-made structures
In this paper, we have proposed a combined Local Binary Pattern (LBP) and Weber Law Descriptor (WLD) feature based Conditional Random Field (CRF) model for detection of man made structures such as buildings in natural scenes. In natural scenes, the structure may have textural attributes or some portions of the object may be apparent as textures. The CRF model learning has been carried out in feature space. The spatial contextual dependencies of the structures has been taken care by the intrascale LBP features and interscale WLD features. The CRF model learning problem have been formulated in pseudolikelihood framework while the inferred labels have been obtained by maximizing the posterior distribution of the feature space. Iterated conditional mode algorithm (ICM) has been used to obtain the labels. The proposed algorithm could successfully be tested with many images and was found to be better than that of Kumar's algorithm in terms of detection accuracy.
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