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Crops Disease Diagnosing Using Image-Based Deep Learning Mechanism

机译:基于图像的深度学习机制对作物疾病的诊断

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To increase the crop productivity environmental factors or product resource, such as temperature, humidity, labor and electrical costs are important. However, above all, crop disease is the crucial factor and causes 20–30% reduction of the productivity in case of its infection. Thus, the disease of the crop is much more important factor affecting the productivity of the crops. Therefore, the farmer concentrates on the cause of the disease in the crops during its growth, but it is not easy to recognize the disease on the spot. Until now, they just relied on the opinion of the experts or their own experiences when the disease is doubtful. However, it triggers a decrease in productivity as no taking appropriate action and time. In this paper, to address this problem we provide the mechanism, which dynamically analyses the images of the disease. The analysis result is immediately sent to the farmer required the decision and then feedback from the farmer is reflected to the model. The mechanism performs the diagnosing of the disease, especially for the strawberry fruits and leaves, with data set of images using deep learning. Thus, it encourages increasing of the productivity through the fast recognition of disease and the consequent action.
机译:为了提高农作物的生产力,环境因素或产品资源(例如温度,湿度,人工和电费)非常重要。但是,最重要的是,农作物病害是至关重要的因素,一旦受到感染,农作物的生产力就会降低20-30%。因此,农作物的病害是影响农作物生产力的重要因素。因此,农民将注意力集中在作物生长过程中的病因上,但是在现场识别病害并不容易。直到现在,当疾病令人怀疑时,他们还只是依靠专家的意见或他们自己的经验。但是,由于不采取适当的措施和时间,它会导致生产率下降。在本文中,为了解决这个问题,我们提供了一种机制,可以动态分析疾病的图像。将分析结果立即发送给需要决策的农民,然后将农民的反馈反映到模型中。该机制通过使用深度学习的图像数据集来执行疾病诊断,尤其是草莓果实和叶子的诊断。因此,它通过快速识别疾病和采取相应的措施来鼓励提高生产率。

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