一种基于随机森林算法的印度蔬菜识别分类新方法

Arun K Talawar, N. K. Honnagoudar, Prabhu Y Avaradi
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引用次数: 0

摘要

只有在春天忠实地播种的农民,才会在秋天收获丰收。本研究的目的是使用随机森林(RF)算法创建一个有用的分类方法。对不同的作物,即茄子、胡萝卜和洋葱进行了研究,得出了许多依赖于设计、颜色和质地的特征。描述了一个准备阶段,使用图像分析来增强蔬菜图像数据集,以最小化其颜色指数。然后提取蔬菜图像的特征。最后,将随机森林(Random Forests, RF)这一新兴的模式识别方法应用到蔬菜的分类过程中。该方法在蔬菜的识别和分类方面取得了较高的准确性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Method for Identification and Classification of Indian Vegetables Using Random Forest Algorithm
It is only the farmer who faithfully plants seeds in the spring, who reaps a harvest in the autumn. The goal of this study is to create a useful classification method using the Random Forest (RF) algorithm. Different crops, namely brinjal, carrot, and onion, were examined, and many features have been derived dependent on the design, color, and texture. A preparation stage is described that uses image analysis to enhance the vegetables images dataset in order to minimize their color index. The features of the vegetable images are then retrieved. Finally, Random Forests (RF), a newly generated pattern recognition method, used in the vegetable’s classification process. The proposed method achieved higher accuracy in terms of identification and classification of the vegetables
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