Fruits Classification from Image using MPEG-7 Visual Descriptors and Extreme Learning Machine

J. Siswantoro, Heru Arwoko, M. Z. Siswantoro
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引用次数: 3

Abstract

Fruit image classification has several applications and can be used as alternative to traditionally fruit classification performed by human expert. This paper aims to propose fruits classification method from image using extreme learning machine (ELM), MPEG-7 visual descriptors, and principle component analysis (PCA). The optimum parameters of ELM and PCA were determined using grid search optimization. The best classification performance of 97.33% has been achieved in classifying Indonesian fruit images consisted of 15 classes. By applying the ensemble of ELMs, the classification accuracy was increased to 98.03%. This result shows that the proposed method produces high classification performance.
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基于MPEG-7视觉描述符和极限学习机的图像水果分类
水果图像分类具有多种应用,可以替代传统的由人类专家进行的水果分类。本文提出了一种基于极限学习机(ELM)、MPEG-7视觉描述符和主成分分析(PCA)的水果图像分类方法。采用网格搜索优化确定了ELM和PCA的最优参数。对15类印度尼西亚水果图像进行分类,分类率达到97.33%。应用elm集成后,分类准确率提高到98.03%。结果表明,该方法具有较高的分类性能。
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