Wood Species Recognition Using GLCM and Correlation

R. Bremananth, B. Nithya, R. Saipriya
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引用次数: 23

Abstract

The proposed system identifies the species of the wood using the textural features present in its barks. Each species of a wood has its own unique patterns in its bark, which enabled the proposed system to identify it accurately. Automatic wood recognition system has not yet been well established mainly due to lack of research in this area and the difficulty in obtaining the wood database. In our work, a wood recognition system has been designed based on pre-processing techniques, feature extraction and by correlating the features of those wood species for their classification. Texture classification is a problem that has been studied and tested using different methods due to its valuable usage in various pattern recognition problems, such as wood recognition, rock classification. The most popular technique used for the textural classification is Gray-level Co-occurrence Matrices (GLCM). The features from the enhanced images are thus extracted using the GLCM is correlated, which determines the classification between the various wood species. The result thus obtained shows a high rate of recognition accuracy proving that the techniques used in suitable to be implemented for commercial purposes.
基于GLCM和相关性的木材树种识别
该系统通过树皮的纹理特征来识别木材的种类。每一种木材的树皮都有自己独特的图案,这使得所提出的系统能够准确地识别它。木材自动识别系统尚未建立,主要原因是该领域的研究较少,木材数据库获取困难。在我们的工作中,我们设计了一个基于预处理技术和特征提取的木材识别系统,并通过将这些木材物种的特征关联起来进行分类。由于纹理分类在木材识别、岩石分类等各种模式识别问题中具有重要的应用价值,因此人们对纹理分类进行了不同方法的研究和测试。最常用的纹理分类技术是灰度共生矩阵(GLCM)。因此,从增强图像中提取的特征使用GLCM是相关的,这决定了不同树种之间的分类。结果表明,该方法具有较高的识别准确率,适合商业应用。
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