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Feature selection for Malaysian medicinal plant leaf shape identification and classification

机译:马来西亚药用植物叶片形状识别和分类的特征选择

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Malaysian medicinal plants may be abundant natural resources but there has not been much research done on preserving the knowledge of these medicinal plants which enables general public to know the leaf using computing capability. Therefore, in this preliminary study, a novel framework in order to identify and classify tropical medicinal plants in Malaysia based on the extracted patterns from the leaf is presented. The extracted patterns from medicinal plant leaf are obtained based on several angle features. However, the extracted features create quite large number of attributes (features), thus degrade the performance most of the classifiers. Thus, a feature selection is applied to leaf data and to investigate whether the performance of a classifier can be improved. Wrapper based genetic algorithm (GA) feature selection is used to select the features and the ensemble classifier called Direct Ensemble Classifier for Imbalanced Multiclass Learning (DECIML) is used as a classifier. The performance of the feature selection is compared with two feature selections from Weka. In the experiment, five species of Malaysian medicinal plants are identified and classified in which will be represented by using 65 images. This study is important in order to assist local community to utilize the knowledge and application of Malaysian medicinal plants for future generation.
机译:马来西亚药用植物可能是丰富的自然资源,但是在保存这些药用植物的知识方面并没有进行太多研究,这使普通大众能够使用计算能力来了解叶片。因此,在这项初步研究中,提出了一种新的框架,以便基于从叶中提取的模式来识别和分类马来西亚的热带药用植物。基于几个角度特征获得了从药用植物叶片中提取的模式。但是,提取的特征会创建大量的属性(特征),从而降低大多数分类器的性能。因此,将特征选择应用于叶子数据并研究是否可以提高分类器的性能。基于包装器的遗传算法(GA)特征选择用于选择特征,称为不平衡多类学习的直接集成分类器(DECIML)的整体分类器用作分类器。将功能选择的性能与来自Weka的两个功能选择进行比较。在实验中,识别并分类了五种马来西亚药用植物,其中将使用65张图像表示。这项研究很重要,以帮助当地社区利用马来西亚药用植物的知识和应用来下一代。

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