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Deep convolutional neural networks for mobile capture device-based crop disease classification in the wild

机译:野外流动捕获设备的作物疾病分类深度卷积神经网络

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摘要

Fungal infection represents up to 50% of yield losses, making it necessary to apply effective and cost efficient fungicide treatments, whose efficacy depends on infestation type, situation and time. In these cases, a correct and early identification of the specific infection is mandatory to minimize yield losses and increase the efficacy and efficiency of the treatments. Over the last years, a number of image analysis-based methodologies have been proposed for automatic image disease identification. Among these methods, the use of Deep Convolutional Neural Networks (CNNs) has proven tremendously successful for different visual classification tasks.
机译:真菌感染占产量损失的50%,使得有必要应用有效和成本效率的杀菌剂治疗,其疗效取决于侵扰类型,情况和时间。 在这些情况下,必须对特异性感染的正确和早期鉴定是强制性的,以尽量减少产量损失并增加治疗的疗效和效率。 在过去几年中,已经提出了许多基于图像分析的方法,用于自动图像疾病鉴定。 在这些方法中,使用深度卷积神经网络(CNNS)已经证明了不同的视觉分类任务非常成功。

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