New Feature Extraction for Wood Species Recognition System via Statistical Properties of Line Distribution

Hafizza Abdul Ghapar, U. Khairuddin, Rubiyah Yusof, A. S. M. Khairuddin, Azlin Ahmad
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Abstract

A key to wood identification is the distinguishable features found on the cross-sectional surface of each tree species. The surface pattern on the wood cross-section may look very similar to non-experts. However, trained experts may identify wood species based on distinct and discriminant features of the pattern. An automatic wood recognition system based on machine vision to emulate the experts, the KenalKayu has been developed with high classification accuracy. Unfortunately, when more wood species were added into the system's database, the accuracy of the system reduced. It is important for the system to have a customized feature extractor solely for wood pattern such as the statistical properties of pores distribution (SPPD) which has been proven to increase the system's accuracy. As the wood surface pattern is not only defined by pores, but lines as well, this paper presented additional new feature extraction method based on statistical properties of line distribution (SPLD) to capture the discriminant line features of each species. When used alone as feature extractor, the SPLD managed to get 88% accuracy, and the number increases to 99.5% when combined with SPPD features and 100% when combined with both SPPD and Basic Grey Level Aura Matrix features. It shows that the SPLD is an essential customized feature extractor for wood identification purposes.
基于线形分布统计特性的树种识别新特征提取
木材鉴定的关键是在每个树种的横截面表面上发现可区分的特征。木材横截面上的表面图案对于非专业人士来说可能看起来非常相似。然而,训练有素的专家可以根据木材的独特和区别性特征来识别木材种类。开发了一种基于机器视觉模拟专家的木材自动识别系统,具有较高的分类精度。不幸的是,当更多的木材种类被添加到系统数据库中时,系统的准确性降低了。对于系统来说,重要的是要有一个专门针对木材图案的定制特征提取器,例如孔隙分布的统计特性(SPPD),这已被证明可以提高系统的准确性。由于木材表面图案不仅由孔隙定义,而且由线条定义,因此本文提出了基于线条分布统计特性(SPLD)的特征提取方法,以捕获各树种的判别线条特征。当单独使用SPLD作为特征提取器时,准确率达到88%,当与SPPD特征结合使用时,准确率增加到99.5%,当与SPPD和基本灰度光环矩阵特征结合使用时,准确率增加到100%。结果表明,SPLD是木材识别中必不可少的定制特征提取器。
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