使用最优深度学习模型识别多种葡萄叶病:例外

V. Tanwar, Shweta Lamba
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引用次数: 0

摘要

葡萄是印度最受欢迎的水果之一。葡萄果实、茎和叶上大量疾病的传播导致产量下降。细菌、真菌、病毒等是树叶病害的罪魁祸首。病害是制约果实产量的重要因素,往往难以控制。如果没有准确的疾病识别,就无法在正确的时间对疾病实施正确的控制措施。识别和分类植物叶片感染最流行的方法之一是图像处理。这项研究使用异常分类方法来帮助识别和分类葡萄叶疾病和来自Kaggle等在线资源的数据集。本研究共使用了8500张葡萄叶片图像。此外,对KNN和SVM两种替代方法在检测葡萄植株病害方面的有效性进行了评估。所建议的研究模型对葡萄叶片病害的检测和分类准确率为99%,与其他模型相比具有更高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Grapes Leaf Disease Identification Using an Optimal Deep Learning Model: Xception
One of the popular fruit yields in India is the grape. The spread of numerous diseases on grapes’ fruit, stem, and leaves causes a decline in production. Bacteria, fungi, viruses, etc. are the principal culprits behind leaf diseases. Diseases are a significant influence in restricting the yield of fruit, and they are frequently challenging to control. Correct control measures cannot be implemented at the right time for a disease without an accurate illness identification. One of the most popular methods for identifying and categorizing plant leaf infections is image processing. This study uses the Xception classification approach to help identify and categorize grape leaf diseases and datasets taken from an online source like Kaggle. There are a total of 8500 images of grape leaves to use in this research. Furthermore, two alternative methods KNN and SVM were evaluated in terms of their effectiveness in detecting illnesses in grape plants. The suggested Research model has an accuracy of 99% for detecting and classifying the tested grape leaf disease which has higher accuracy as compared to alternative models.
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