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首页> 外文期刊>Computers and Electronics in Agriculture >Tree species classification based on image analysis using Improved-Basic Gray Level Aura Matrix
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Tree species classification based on image analysis using Improved-Basic Gray Level Aura Matrix

机译:基于图像的分析的改进基本灰度光环矩阵树种分类

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摘要

Classifying wood species accurately is crucial since incorrect labelling of wood species may incur huge loss to timber industries. An automated wood species recognition system is designed based on image analysis of the wood texture which consists of image acquisition, feature extraction, and classification. There are 100 images captured from each wood sample which are divided into training samples and testing samples. An effective feature extractor is important to extract most discriminant features from the wood texture in order to distinguish the wood species accurately. Therefore, in this paper, a novel feature extractor based on Improved-Basic Gray Level Aura Matrix (I-BGLAM) technique is proposed to extract 136 features from each wood image. Fundamentally, the proposed I-BGLAM feature extractor which focuses on the gray level of the wood images is rotational invariant and has smaller feature dimension since only discriminative features are considered. Then, the proposed system automatically classifies 52 wood species by using backpropagation neural network classifier. The proposed I-BGLAM feature extractor had shown to overcome the limitations of Gray Level Co-occurrence Matrix (GLCM) and conventional BGLAM feature extractors in wood species recognition system. Experiments were performed to determine which dataset would be the most ideal when dividing the 100 wood images into training samples and testing samples. Results showed that the most ideal dataset that should be used is dataset that consists of 80 training samples and 20 test samples. The proposed method showed marked improvement of 97.01% accuracy to the work done previously. (c) 2016 Elsevier B.V. All rights reserved.
机译:准确地对木材种类进行分类至关重要,因为错误地标记木材种类可能会给木材行业造成巨大损失。基于木材纹理的图像分析,设计了一种自动的木材物种识别系统,该系统包括图像采集,特征提取和分类。每个木材样品捕获100张图像,分为训练样品和测试样品。有效的特征提取器对于从木材纹理中提取大多数可辨别特征很重要,以便准确区分木材种类。因此,本文提出了一种基于改进的基本灰度光环矩阵(I-BGLAM)技术的特征提取器,用于从每个木材图像中提取136个特征。从根本上说,提出的I-BGLAM特征提取器着重于木材图像的灰度,它是旋转不变的,并且具有较小的特征尺寸,因为仅考虑了鉴别特征。然后,该系统利用反向传播神经网络分类器对52种木材进行自动分类。所提出的I-BGLAM特征提取器已证明克服了木材物种识别系统中灰度共生矩阵(GLCM)和常规BGLAM特征提取器的局限性。进行实验以确定将100张木质图像分为训练样本和测试样本时哪个数据集是最理想的。结果表明,应该使用的最理想的数据集是由80个训练样本和20个测试样本组成的数据集。所提出的方法显示出比以前完成的工作显着提高了97.01%的准确性。 (c)2016 Elsevier B.V.保留所有权利。

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