Wood Identification on Microscopic Image with Daubechies Wavelet Method and Local Binary Pattern

Salma, P. H. Gunawan, E. Prakasa, B. Sugiarto, R. Wardoyo, Y. Rianto, R. Damayanti, Krisdianto, L. M. Dewi
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引用次数: 8

Abstract

Wood is one of Indonesia’s very rich natural resources abundant because the number reaches around 4,000 species. The process of identifying wood species currently it is still done manually in a relatively long time by observing types of fibers, vessels, rays, and other structures directly because there is not a much automatic application of identification of wood species is made. This is an obstacle for experts anatomy of wood because it must check wood species accurately and quickly. Therefore that, the field of Computer Vision is the right solution to develop the process Identification of wood species automatically. In this research program will be made application of Computer Vision to identify wood species with using the Daubechies Wavelet (DW) and Local Binary Pattern (LBP) methods for The extraction of the wood pattern is then classified Support Vector Machine (SVM) method. Results obtained in this study is able to identify the microscopic image of wood as a species of wood with average SVM accuracy is 85%.
基于涂抹小波和局部二值模式的显微图像木材识别
木材是印尼非常丰富的自然资源之一,因为其数量丰富,达到4000种左右。目前的树种识别过程在相当长的一段时间内仍然是手工进行的,通过直接观察纤维、血管、射线和其他结构的类型,因为没有太多的木材树种识别的自动应用。这对木材解剖专家来说是一个障碍,因为它必须准确而快速地检查木材种类。因此,计算机视觉是开发木材树种自动识别过程的正确解决方案。本研究将应用计算机视觉技术对木材树种进行识别,采用小波(DW)和局部二值模式(LBP)方法对木材树种进行提取,然后采用支持向量机(SVM)方法对木材树种进行分类。本研究的结果能够将木材的显微图像识别为一种木材,其平均SVM准确率为85%。
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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