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Automatic Medicinal Plants Classification using Multi-channel Modified Local Gradient Pattern with SVM Classifier

机译:自动药用植物分类使用多通道修改的局部梯度图案与SVM分类器

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Most of the people in the world rely on traditional medicine which is made from medicinal plants. However, very few works concentrate on automatic classification. Therefore, the automatic classification of medicinal plants demands more investigation which is an important issue for conservation, authentication, and production of medicines. In this paper, for automatically classifying medicinal plants, we present a Multi-channel Modified Local Gradient Pattern (MCMLGP), a new texture-based feature descriptor that uses different channels of color images for extracting more significant features to improve the performance of classification. We have trained our proposed approach using SVM classifier with various kernels such as linear, polynomial and HI. In addition, we have used different feature descriptors for comparative experimental analysis with MCMLGP by conducting the rigorous experiment on our own medicinal plants dataset. The proposed approach gain higher accuracy (96.11%) than other techniques, and significantly valuable for exploration and evolution of medicinal plants classification.
机译:世界上大多数人依赖于药用植物制成的传统医学。然而,很少有效专注于自动分类。因此,药用植物的自动分类需要更多的调查,这是药物保护,认证和生产的重要问题。在本文中,为了自动对药用植物进行分类,我们呈现了一种多通道修改的本地梯度模式(MCMLGP),一种新的基于纹理的特征描述符,用于使用不同的彩色图像通道来提取更大的特征来提高分类性能。我们已经使用SVM分类器培训了我们提出的方法,其中各种内核,如线性,多项式和Hi。此外,我们通过对我们自己的药用植物数据集进行严格的实验,使用不同的特征描述符进行MCMLGP的比较实验分析。所提出的方法比其他技术提高了更高的准确性(96.11%),对药用植物分类的勘探和演变有了显着有价值。

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