Application of PSO in CNN attribute weighting for banana tree classification based on leaf images

Suamanda Ika Novichasari, Imam Adi Nata
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Abstract

Banana (Musa paradisiaca) is a very popular fruit in Indonesia. Banana production in Indonesia, with more than 200 types of bananas, accounts for more than 50% of banana production in Asia. Differences in how to consume Ambon bananas and Kepok bananas and their various benefits encourage cultivators to be careful in choosing seeds to avoid mistakes. Distinguishing the seeds of Ambon bananas and kepok bananas is more difficult than distinguishing between Ambon bananas and kepok bananas. This is because the leaves and stems of the seeds look the same. The purpose of this study is to use an optimization algorithm to improve the performance of the image classification algorithm on the image of kepok banana leaves and Ambon bananas to assist in the selection of banana plant seeds that can be used by banana cultivators to get the maximum benefit according to the desired type of banana. The results of this study are used as the basis for making a decision support system to assist in the selection of banana plant seeds that can be used by banana cultivators in order to get the maximum benefit according to the desired type of banana
基于叶片图像的香蕉树分类 CNN 属性加权中的 PSO 应用
香蕉(Musa paradisiaca)是印度尼西亚非常受欢迎的水果。印度尼西亚的香蕉产量占亚洲香蕉产量的 50%以上,有 200 多种香蕉。安汶香蕉和 Kepok 香蕉在食用方法上的差异以及它们的各种功效促使种植者在选择种子时小心谨慎,以免出错。区分安汶香蕉和凯波克香蕉的种子比区分安汶香蕉和凯波克香蕉更难。这是因为种子的叶子和茎看起来是一样的。本研究的目的是使用优化算法来提高图像分类算法在 kepok 香蕉叶和 Ambon 香蕉图像上的性能,以帮助香蕉种植者根据所需的香蕉类型来选择香蕉植物种子,从而获得最大利益。这项研究的结果将作为决策支持系统的基础,以帮助香蕉种植者选择香蕉植物种子,从而根据所需的香蕉类型获得最大利益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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