基于cnn的人工智能(ai)实现在苏邦地区识别印度香米

Ari ajibekti Masriwilaga, Ari Wibowo, Dian Susanto
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引用次数: 0

摘要

印度香米在印尼中上层阶级中越来越受欢迎。不幸的是,这种水稻只生长在印度北部和巴基斯坦。大米必须进口,印尼的价格相对昂贵。针对这一现象,农业研究开发院的水稻研究中心(BB Padi)成功地培育出了一种特殊的水稻品种“巴斯马蒂”。巴罗玛是印度香米的缩写。巴罗玛水稻于2019年在素邦推出,到目前为止,据记录,素邦的几块农田都种植了这种水稻。水稻品种种类越多,发现的水稻种类也就越多。这将使消费者难以区分不同种类的大米。因此,我们需要一个解决方案来克服这个问题。一个可以使用的解决方案是使用人工智能技术,就像我们所做的研究一样。使用CNN算法在检测大米类型(例如用于训练数据和测试数据的数据类型)方面产生了非常好的准确性。从模型训练的结果来看,它产生了98.52%的准确率,而模型测试看到模型预测标签的正确程度是97.80%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CNN-BASED ARTIFICIAL INTELLIGENCE (AI) IMPLEMENTATION TO IDENTIFY BASMATI RICE IN SUBANG DISTRICT
The existence of Basmati rice among the upper middle class in Indonesia is increasingly popular. Unfortunately, this rice is only grown in northern India and Pakistan. Fulfillment of rice must be imported and the price in Indonesia is relatively expensive. Responding to this phenomenon, the Center for Rice Research (BB Padi), the Agricultural Research and Development Agency succeeded in assembling a special rice variety Basmati. And given the name Baroma, an abbreviation of type Basmati Aromatic rice. And Baroma rice was launched in Subang in 2019 until now it has been recorded that several agricultural lands in Subang have planted this type. The more types of rice varieties, the more types of rice will be found. So that it will make consumers difficult to distinguish between types of rice with one another. Therefore, we need a solution to overcome this problem. And one solution that can be used is to use AI technology, as in the research we did. Using the CNN algorithm produces very good accuracy for detecting types of rice such as the type of data used for training data and test data. From the results of the model training carried out, it produces an accuracy rate of 98,52% while model testing to see how well the model predicts the label correctly is 97,80%.
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