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Deep Learning Detected Nutrient Deficiency in Chili Plant

机译:深度学习在辣椒植物中检测到营养不足

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Chili is a staple commodity that also affects the Indonesian economy due to high market demand. Proven in June 2019, chili is a contributor to Indonesia’s inflation of 0.20% from 0.55%. One factor is crop failure due to malnutrition. In this study, the aim is to explore Deep Learning Technology in agriculture to help farmers be able to diagnose their plants, so that their plants are not malnourished. Using the RCNN algorithm as the architecture of this system. Use 270 datasets in 4 categories. The dataset used is primary data with chili samples in Boyolali Regency, Indonesia. The chili we use are curly chili. The results of this study are computers that can recognize nutrient deficiencies in chili plants based on image input received with the greatest testing accuracy of 82.61% and has the best mAP value of 15.57%.
机译:辣椒是主要商品,由于市场需求旺盛,辣椒也影响印尼经济。辣椒在2019年6月得到证明,是造成印尼通货膨胀率从0.55%升至0.20%的原因。原因之一是营养不良造成的农作物歉收。在这项研究中,目标是探索农业中的深度学习技术,以帮助农民能够诊断出他们的植物,从而使他们的植物不营养不良。使用RCNN算法作为该系统的体系结构。在4个类别中使用270个数据集。所使用的数据集是印度尼西亚Boyolali Regency中辣椒样本的主要数据。我们使用的辣椒是卷曲辣椒。这项研究的结果是一种计算机,该计算机可以根据接收到的图像输入识别辣椒植物中的营养素缺乏症,其最大测试准确度为82.61%,最佳mAP值为15.57%。

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