基于一阶特征提取和多支持向量机分类器的花卉识别

Fakhriyah Prananingrum Pramadi, Christy Atika Sari, E. H. Rachmawanto, De Rosal Ignatius Moses Setiadi
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引用次数: 1

摘要

提出了一种基于一阶特征提取和多支持向量机(Multi-SVM)的花卉图像识别技术。之所以选择一阶特征提取,是因为一阶特征提取是对花的宏观结构进行纹理特征提取,适合于识别花的类型。为了进行特征提取,从RGB到灰度进行颜色空间转换。在提取所有特征后,由Multi-SVM分类器进行分类。多支持向量机具有分类两个以上类别的优点。本研究使用了金盏菊、鸢尾花、大菊、牡丹和玫瑰五种花。经识别测试,准确率达80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flowers Identification using First-order Feature Extraction and Multi-SVM Classifier
This research proposes a technique to identify flower images based on first order feature extraction and with Multi-Support Vector Machine (Multi-SVM). First-order feature extraction was chosen because it is the extraction of texture features in the macrostructure, which is considered suitable for identifying types of flowers. To perform feature extraction, color space conversion is done from RGB to Grayscale. After all features are extracted, the classification is done by the Multi-SVM classifier. Multi-SVM has the advantage of classifying more than two classes. In this study, five types of flowers were used, namely Calendula, Iris, Leucanthemum maximum, Peony, and Rose. Based on identification testing, the accuracy is 80%.
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