利用CNN和肥料推荐引擎优化植物病害预测

P. Kanaga Priya, T. Vaishnavi, T. Pavithra, R. Sivaranjani, A. Reethika, G. Ramesh Kalyan
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引用次数: 0

摘要

印度经济的很大一部分依赖于农业生产力,而植物病害的影响可能是巨大的。植物受到疾病影响的后果可导致产量大幅下降,而经济损失的下降是农产品质量和数量下降的独特后果。为了避免农业生产力和数量的下降,必须认识到植物病害。在对大量农作物进行监测的同时,植物病害检测也受到越来越多的关注。因此,利用图像处理方法进行植物病害诊断是可能的。现有系统的主要局限性是只能预测植物病害,而本工作不仅可以检测植物病害,还可以推荐合适的肥料。该模型使用的数据集包含16870张图像,该模型使用深度卷积神经网络(CNN)实现。该模型对水果叶片的准确率为96%,对蔬菜叶片的准确率为89%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized Plant Disease Prediction using CNN and Fertilizer Recommendation Engine
A large portion of the Indian economy depends on agricultural productivity, and the impact of plant diseases can be significant. The consequences of a plant being affected by a disease can result in a considerable decrease in output, and the experiencing decline in financial losses is a unique consequence of a decline in both the caliber and amount of agricultural goods. To avoid a reduction in agricultural productivity and quantity, it is essential to recognize plant diseases. While enormous acres of crops are being monitored, plant disease detection is receiving an increasing amount of attention. Thus, this is possible by making use of image processing methods for plant disease diagnosis. The major limitation of the existing system is, it only predicts a plant disease, and this work not only detects the plant disease but also recommends a suitable fertilizer. The dataset used in the proposed model contains 16870 images and the model is implemented using a deeper Convolutional Neural Network (CNN). The level of accuracy accomplished by the model is 96% for fruit leaves and 89% for vegetable leaves.
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