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Performance Analysis of Discrete Wavelet Transform Based First-order Statistical Texture Features for Hardwood Species Classification

机译:基于离散小波变换一阶统计纹理特征的硬木树种性能分析

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A simple and efficient discrete wavelet transform (DWT) based first-order statistical (FOS) texture descriptor is proposed in this paper to accurately classify the microscopic images of hardwood species. Primarily, DWT decomposes each image up to 8 levels using selected Daubechies (db1- db10) wavelet as a decomposition filter. Subsequently, four FOS features, namely, mean, standard deviation, skewness and kurtosis are employed to obtain substantial signatures of these images at different levels. The db3 based FOS texture features has achieved 96.80% classification accuracy compared to 93.20% classification accuracy obtained by local binary pattern features using linear support vector machine (SVM) classifier.
机译:为了准确地对硬木树种的显微图像进行分类,提出了一种简单有效的基于离散小波变换(DWT)的一阶统计(FOS)纹理描述符。首先,DWT使用选定的Daubechies(db1- db10)小波作为分解滤波器将每个图像分解为8个级别。随后,采用四个FOS特征,即均值,标准差,偏度和峰度,以获取这些图像在不同级别上的实质性特征。基于db3的FOS纹理特征已实现96.80%的分类精度,而使用线性支持向量机(SVM)分类器通过局部二进制图案特征获得的分类精度为93.20%。

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