A Comparative Study of Feature Extraction Methods for Wood Texture Classification

Prasetiyo, M. Khalid, R. Yusof, F. Mériaudeau
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引用次数: 29

Abstract

The objective of this paper is to evaluate the classification performance of several feature extraction and classification methods for exotic wood texture images as dataset. The Gray Level Co-occurrence Matrix, Local Binary Patterns, Wavelet, Ranklet, Granulometry, and Laws’ Masks will be used to extract features from the images. The extracted features are then fed into five classification techniques: Linear and Quadratic Classifier, Neural Networks, Support Vector Machine, and K-Nearest Neighbor so that each class membership can be obtained. The success rate of each method then measured by comparing the predicted labels and its ground truth so that in the end, the best feature extraction method will be indicated by the highest classification rate. This paper provides recommendations in feature extraction method and classification technique which may give good result in similar task. By considering several factors, such as: computational complexity, classification rate, and running time, this work has found that LBP is more appropriate to analyze wood texture.
木材纹理分类特征提取方法的比较研究
本文的目的是评估几种特征提取和分类方法对外来木材纹理图像作为数据集的分类性能。灰度共生矩阵、局部二值模式、小波、Ranklet、粒度法和Laws’mask将被用于从图像中提取特征。然后将提取的特征输入到五种分类技术中:线性和二次分类器、神经网络、支持向量机和k近邻,以便获得每个类的隶属关系。然后通过比较预测的标签及其真实值来衡量每种方法的成功率,最终以最高的分类率表示最佳的特征提取方法。本文在特征提取方法和分类技术方面提出了建议,以期在类似的任务中取得较好的效果。通过对计算复杂度、分类率、运行时间等因素的综合考虑,本文发现LBP更适合于木材纹理的分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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