利用深度学习模型预测苹果叶病

Poorna Prakash S, Shanthini M, Amrish Manickraj J, Hariharan A, Naresh S, Suresh kumar A
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摘要

在印度,近 20 万人依靠苹果生产为生,苹果约占各邦国内生产总值的 16%。虽然苹果产量仅次于其他水果,但它带来的收入却更多。此外,印度的苹果总产量在全球排名第五。因此,苹果是一种对我们的经济状况有重大影响的水果。苹果的产量主要受疮痂病、雪松锈病、黑腐病等叶片病害的影响。为了防止苹果叶部病害蔓延到整棵树,在感染初期发现病害至关重要。我们提出了一种卷积神经网络方法来准确有效地检测这些叶部病害。图像预处理和增强方法有助于我们从背景中区分出感兴趣的区域。然后,我们应用深度学习算法对苹果叶片图像数据集进行了训练和验证。在我们的模型中,使用了准确率高达 98.42% 的密集网络算法来标记叶片病害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Apple Leaf Disease Prediction Using Deep Learning Models
In India, nearly two lakh people rely on apple production for a living, with apples accounting for approximately 16% of GDP in their respective states. Although apple production is second only to that of other fruits in terms of volume, it generates more revenue. In addition, India ranks fifth in total apple production worldwide. As a result, the apple is a fruit that has a significant impact on our economic situation. Apple productivity is primarily influenced by leaf diseases such as scab, cedar rust, black rot, and others. To prevent apple leaf diseases from spreading throughout the tree, it is critical to detect them in their early stages of infection. We proposed a convolutional neural network methodology to accurately and efficiently detect these leaf diseases. The image pre-processing and augmentation methods help us distinguish the region of interest from the background. We then trained and validated our dataset of apple leaf images by applying deep learning algorithms. The Dense Net algorithm, which has a 98.42% accuracy rate, is used to label the leaf diseases in our model.
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