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Fuzzy rule classifier: Capability for generalization in wood color recognition

机译:模糊规则分类器:木材颜色识别的泛化能力

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摘要

In this paper, a classification method based on fuzzy linguistic rules is exposed. It is applied for the recognition of the gradual color of wood in an industrial context. The wood, which is a natural material, implies uncertainty in the definition of its color. Moreover, the timber context leads obtaining imprecise data. Several factors can have an impact on the sensors (ageing of the acquisition system, variation of the ambient temperature, etc.). Finally, the data sets are often small and incomplete. Thus the proposed method must work within these constraints, and must be compatible with the time-constraint of the system. This generally imposes a weak complexity of the recognition system. The Fuzzy Rule Classifier is split in two main parts, the fuzzification step and the rule generation step. To improve the tuning of this classifier, a specific fuzzification method is presented and compared with more classical ones. Several comparisons have been made with other classification method such as neural network or support vector machine. This experimental study showed the suitability of the proposed approach essentially in term of generalization capabilities from small data sets, and recognition rate improvement.
机译:本文提出了一种基于模糊语言规则的分类方法。它用于在工业环境中识别木材的渐变色。木材是天然材料,暗示其颜色定义不确定。此外,木材环境导致获得不精确的数据。几个因素可能会影响传感器(采集系统的老化,环境温度的变化等)。最后,数据集通常很小且不完整。因此,所提出的方法必须在这些约束下工作,并且必须与系统的时间约束兼容。这通常使识别系统的复杂性变弱。模糊规则分类器分为两个主要部分:模糊化步骤和规则生成步骤。为了改进该分类器的调整,提出了一种特定的模糊化方法,并将其与更为经典的方法进行比较。与其他分类方法(例如神经网络或支持向量机)进行了一些比较。这项实验研究表明,从小数据集的泛化能力和识别率提高的角度来看,该方法的适用性。

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