Spectral histogram representations for visual modeling

Xiuwen Liu, Qiang Zhang
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引用次数: 2

Abstract

We present spectral histogram representations for visual modeling. Based on a generative process, the representation is derived by partitioning the frequency domain into small disjoint regions and assuming independence among the regions. This gives rise to a set of filters and a representation consisting of marginal distributions of those filter responses. A distinct advantage of our representation is that it can be effectively used for different classification and recognition tasks, which is demonstrated by experiments and comparisons in texture classification, face recognition, and appearance-based 3D object recognition. The marked improvement over existing methods justifies our principle that effective priori knowledge should be derived from physical generative processes.
用于可视化建模的光谱直方图表示
我们提出了用于可视化建模的光谱直方图表示。基于生成过程,通过将频域划分为小的不相交区域并假设区域之间的独立性来导出表示。这就产生了一组滤波器和由这些滤波器响应的边际分布组成的表示。通过纹理分类、人脸识别和基于外观的3D物体识别的实验和比较,我们的表征方法的一个明显优势是可以有效地用于不同的分类和识别任务。对现有方法的显著改进证明了我们的原则,即有效的先验知识应该来自物理生成过程。
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