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Wood Species Recognition Based on Visible and Near-Infrared Spectral Analysis Using Fuzzy Reasoning and Decision-Level Fusion

机译:基于可见和近红外光谱分析的木材物种识别,采用模糊推理和决策级融合

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A novel wood species spectral classification scheme is proposed based on a fuzzy rule classifier. The visible/near-infrared (VIS/NIR) spectral reflectance curve of a wood sample’s cross section was captured using a USB 2000-VIS-NIR spectrometer and a FLAME-NIR spectrometer. First, the wood spectral curve—with spectral bands of 376.64–779.84?nm and 950–1650?nm—was processed using the principal component analysis (PCA) dimension reduction algorithm. The wood spectral data were divided into two datasets, namely, training and testing sets. The training set was used to generate the membership functions and the initial fuzzy rule set, with the fuzzy rule being adjusted to supplement and refine the classification rules to form a perfect fuzzy rule set. Second, a fuzzy classifier was applied to the VIS and NIR bands. An improved decision-level fusion scheme based on the Dempster–Shafer (D-S) evidential theory was proposed to further improve the accuracy of wood species recognition. The test results using the testing set indicated that the overall recognition accuracy (ORA) of our scheme reached 94.76% for 50 wood species, which is superior to that of conventional classification algorithms and recent state-of-the-art wood species classification schemes. This method can rapidly achieve good recognition results, especially using small datasets, owing to its low computational time and space complexity.
机译:基于模糊规则分类器提出了一种新颖的木材谱分类方案。使用USB 2000-VIR-NIR光谱仪和火焰 - NIR光谱仪捕获木样品横截面的可见/近红外(VI / NIR)光谱反射曲线。首先,使用主成分分析(PCA)尺寸减少算法处理376.64-779.84〜950-1650Δnm的木光谱曲线。木光谱数据被分成两个数据集,即培训和测试集。训练集用于生成隶属函数和初始模糊规则集,模糊规则正在调整为补充和优化分类规则,以形成完美的模糊规则集。其次,将模糊分类器应用于VIAR和NIR带。提出了一种改进基于Dempster-Shafer(D-S)证据理论的决策级融合方案,以进一步提高木材物种识别的准确性。使用该测试组的测试结果表明,我们的计划的总体识别精度(ORA)达到了50种木种的94.76%,其优于传统的分类算法和最近的最先进的木材种类分类方案。由于其低计算时间和空间复杂性,这种方法可以快速实现良好的识别结果,特别是使用小型数据集。

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