An Approach for Mango Disease Recognition using K-Means Clustering and SVM Classifier

Md. Robel Mia, Amit Chakraborty Chhoton, Mahadi Hasan Mozumder, S. A. Hossain, Awolad Hossan
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引用次数: 3

Abstract

Bangladesh extensively depends on agriculture in terms of economy as well as food security for its huge population. For this reason, it is very important to efficiently grow a plant and enhance its yield. We often face some problem which need to be solved. We build a Mango Disease Recognition system which can recognize the mango disease. It's Very useful to the farmers because using this system they can easily identify their mango disease which is very important to produce more fruits. Using our system user can easily identify the problem and they can take action for better production. There also some existing project of similar topic but theses project are not available to the all users. More over some system recognize disease very poorly and there have less accuracy and it's a huge problem to use the system. Comparing other system our system can be use more efficiently. Recognition of Mango diseases poses two challenging problems, i.e. detection and classification of disease. In here we used K means clustering for feature extraction and SVM for classification. The novelty of our work is that here we recognize the mango diseases which is not existing and our project accuracy is 94.13%. So we think user will be benefited from our project to produce more product which can effect in our economy.
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基于k均值聚类和SVM分类器的芒果病害识别方法
孟加拉国人口众多,在经济和粮食安全方面广泛依赖农业。因此,有效种植植物和提高产量是非常重要的。我们经常面临一些需要解决的问题。构建了一个芒果病害识别系统,实现了对芒果病害的识别。这对农民来说非常有用,因为使用这个系统,他们可以很容易地识别芒果的疾病,这对生产更多的水果非常重要。使用我们的系统,用户可以很容易地发现问题,他们可以采取行动,以更好地生产。也有一些现有的类似主题的项目,但这些项目并不适用于所有用户。另外,一些系统对疾病的识别能力很差,准确性也很低,这是一个很大的问题。与其他系统相比,本系统的使用效率更高。芒果病害的识别有两个难题,即病害的检测和分类。在这里,我们使用K均值聚类进行特征提取,使用SVM进行分类。我们工作的新颖之处在于我们在这里识别了不存在的芒果疾病,我们的项目准确率为94.13%。因此,我们认为用户将从我们的项目中受益,生产更多的产品,从而对我们的经济产生影响。
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