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Hilbert spectrum analysis of piecewise stationary signals and its application to texture classification

机译:分段静止信号的希尔伯特频谱分析及其在纹理分类中的应用

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The piecewise stationary signal is a special kind of non-stationary signals, which exist widely in the real world. Many time-frequency techniques are developed to process non-stationary signals. However, almost all the classical time-frequency methods depends strongly on the choice of the ‘basis’, which makes them not match adaptively the real time-frequency structure of signals. This paper presents new insights on the Hilbert–Huang transform. It is shown that the Hilbert spectra can capture fine time-frequency structures of piecewise stationary signals by generating the ‘bases’ adaptively. Based on that, the harmonic components of high energy can be utilized to generate feature vector for texture image classification. This feature vector is shown to be robust to rotation, uneven illumination and noise. Experimental results on three commonly used texture datasets give challenging recognition rates.
机译:分段静止信号是一种特殊的非静止信号,在现实世界中广泛存在。 开发了许多时频技术以处理非静止信号。 然而,几乎所有古典时频方法都在强烈取决于“基础”的选择,这使得它们不适应地与信号的实时频率结构不匹配。 本文展示了对希尔伯特 - 黄变换的新见解。 结果表明,希尔伯特光谱可以通过自适应地产生“基础”来捕获分段静止信号的精细时频结构。 基于此,可以利用高能量的谐波分量来为纹理图像分类生成特征向量。 该特征向量显示为旋转,不均匀的照明和噪音是强大的。 三种常用纹理数据集的实验结果具有具有挑战性的识别率。

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