A low-cost neural-based approach for wood types classification

R. D. Labati, M. Gamassi, V. Piuri, F. Scotti
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引用次数: 8

Abstract

In many applications such as the furniture and the wood panel production, the classification of wood kinds can provide relevant information concerning the aspect, the properties and the preparation procedures of the products. Usually, the wood kind classification is made by trained operators, but this solution suffers of important drawbacks: it is time consuming and it has low repeatability/accuracy since the classification is related to the operator experience and fatigue. In the literature, some attempts to solve this applicative problem by automatic systems are present, but, unfortunately, these solutions present complex measures and setups. In this paper, we present a novel approach for wood kinds classification based on a neural network system which exploits the emitted spectrum of the wood samples filtered with a bank of low-cost optical filters coupled with a set of photo detectors. The structure of the proposed system can be directly implemented in an embedded low-cost system. The results of the system simulations are very satisfactory and they demonstrate that this approach is feasible and very promising.
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一种低成本的基于神经的木材类型分类方法
在家具、木板生产等许多应用中,木材种类的分类可以提供有关产品的外观、性能和制备过程的相关信息。通常,木材种类分类是由训练有素的操作人员进行的,但这种解决方案存在重要的缺点:耗时,并且由于分类与操作人员的经验和疲劳有关,因此可重复性/准确性较低。在文献中,有一些尝试通过自动系统来解决这个应用问题,但是,不幸的是,这些解决方案提出了复杂的措施和设置。在本文中,我们提出了一种基于神经网络系统的木材分类新方法,该方法利用一组低成本光学滤波器和一组光电探测器滤波后的木材样品的发射光谱。所提出的系统结构可以直接在嵌入式低成本系统中实现。系统仿真结果令人满意,证明了该方法的可行性和应用前景。
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