A Review on Potato Disease Detection and Classification by exploiting Deep Learning Techniques

Khalid Hamza, Saba un Nisa, G. Irshad
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Abstract

The edible potato comes in fifth for human consumption and fourth among main food crops. Since it is a crop that is vegetative grown, many pests and disease can be passed along from one generation to the next. Crop diseases, which have a negative impact on food security as well as economic losses, have a significant impact on the production and quality of yields from potato crops. Thus, the application of unique and precise deep learning-based algorithms for disease detection and classification is highly required. Identifying weaknesses in agricultural products, particularly potatoes requires the use of machine vision and image processing techniques. Deep learning and image processing have been used in agriculture to classify and number of disease and pests affecting potatoes has grown, and study in this area is still continuing. The use of artificial intelligence and image processing in agriculture for the classification and identification of potato pests and disease has grown, and work in this area is still ongoing. Different deep learning techniques, such as VGG19, VGG16, Google Net, Alex Net, and convolution neural network methods, can be used to address the disease problem in potatoes. These methods also examined multiple classes of potato diseases as: Healthy, Black Leg, Black Scurf, Pink Rot, Common Scab, etc. Food safety could be seriously threatened by the spread of potato disease. In this article, deep learning techniques for early detection of potato disease are discussed.
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基于深度学习技术的马铃薯病害检测与分类研究进展
食用马铃薯在人类消费中排名第五,在主要粮食作物中排名第四。由于它是一种营养生长的作物,许多病虫害可以从一代传给下一代。作物病害对粮食安全和经济损失产生负面影响,对马铃薯作物的产量和产量质量产生重大影响。因此,迫切需要独特而精确的基于深度学习的疾病检测和分类算法的应用。识别农产品的弱点,特别是土豆,需要使用机器视觉和图像处理技术。深度学习和图像处理已经在农业中应用于马铃薯病虫害的分类和数量,并且这一领域的研究仍在继续。人工智能和图像处理在农业马铃薯病虫害分类和鉴定中的应用已经有所增长,这一领域的工作仍在进行中。不同的深度学习技术,如VGG19、VGG16、谷歌Net、Alex Net和卷积神经网络方法,可用于解决马铃薯的病害问题。这些方法还检查了多种马铃薯病害,如:健康、黑腿、黑屑、粉红腐病、普通痂等。马铃薯病害的传播会严重威胁食品安全。本文讨论了马铃薯病害早期检测的深度学习技术。
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