基于图像处理和机器学习技术的水稻病害识别

T. Tawde, Kunal Deshmukh, Lobhas Verekar, A. Reddy, S. Aswale, Pratiksha R. Shetgaonkar
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引用次数: 4

摘要

印度以水稻种植而闻名。水稻作为主要作物对人们的生活有着巨大的影响,因为大多数人种植水稻以维持生计,它也创造了就业机会,许多小型工业直接或间接依赖于水稻的种植。这种种植受到各种疾病和宠物的影响,可能会造成巨大的损失。在现代科学技术的帮助下,为提高水稻作物的产量提出了许多研究工作和方法。通过本文的研究,提出了一种有助于水稻8大病害早期检测的方法:褐斑病、叶瘟、叶黑穗病、鞘腐病、桐腐病、鞘枯病和谷地腐病。该模型采用Raspberry pi3b+和相机、温度、湿度等多种传感器进行设计。采用CNN分类器对模型进行训练。该模型能够熟练地识别疾病,总体准确率为99.7%。捕获的图像与疾病名称、温度、湿度、湿度和图像时间戳等细节一起被推送到云端。
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Identification of Rice Plant Disease Using Image Processing and Machine Learning Techniques
India is known for its rice cultivation. Rice being the major crop has it’s huge impact on people’s life as majority people cultivate it for their livelihood, it generate employment too and also many small scale industries directly or indirectly depend in its cultivation. This cultivation is affected by various disease and pets which may result in huge loss. With the help of modern science and technologies many research work and methods are proposed for better yielding of rice crop. Through this research paper a method is proposed which helps early detection of 8 major rice disease namely; Brown spots, Leaf blast, Leaf smut, Sheath rot, Tungro, Sheath blight and Gudi rotten. Proposed model was designed using Raspberry pi3b+ and various sensor’s like camera, temperature and moisture. CNN classifier was employed to train the proposed model. This model was proficient to identify the disease with an overall accuracy of 99.7%. Image captured were pushed to the cloud along with details like disease name, temperature, moisture, humidity and the image timestamp.
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