基于模糊分类的水果成熟度评价

Rija Hasan, S. Monir
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引用次数: 6

摘要

本文利用模糊推理系统(FIS)实现了一种基于样品表观颜色的水果成熟度分类方法。启发式获取的色相及其对应的饱和度和明度作为选择属性,用于将样本分为三类;生的,熟的,过熟的。采用分类树的方法估计Mamdani FIS所需的隶属函数和模糊规则。实验在200个番石榴样品上进行。模糊系统在60%的数据集上进行训练,分类准确率达到93.4%。
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Fruit maturity estimation based on fuzzy classification
In this paper an efficient approach of fruit maturity classification based on apparent color of the specimen is implemented by the aid of fuzzy inference system (FIS). Heuristically acquired hue and its corresponding saturation and lightness are the attributes of choice, which are utilized to classify the sample into three classes; Raw, Ripe, and Overripe. The membership functions and fuzzy rules required by the Mamdani FIS are estimated by the approach of classification tree. The experimentation is performed upon 200 guava samples. The fuzzy system is trained upon 60% of the dataset, yielding 93.4% classification accuracy.
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