葡萄病害检测的深度学习技术探索

Kavita Pandey, Abhimanyu Chandak
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引用次数: 0

摘要

植物病害是造成全球农业经济损失的主要原因之一。在早期阶段发现疾病有助于减少这种损失。近年来,由于整体产量的增加和葡萄数量的减少,对病害检测的重视程度越来越高。由于深度学习具有很好的发展前景,并且具有自动学习和特征提取的优点,这些技术的应用已经得到了广泛的推广。本文综述了目前用于葡萄病害检测的深度学习技术。首先,介绍了葡萄病害检测模型的各个步骤,包括不同的图像采集来源、不同的图像增强技术和使用的各种模型,以及需要评估的参数。其次,本研究总结了所有关于这一主题的文献的重要发现。本文还试图突出研究人员面临的各种挑战以及其中的共同趋势,以便未来对该主题的研究能够取得更高的成绩。
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An Exploration Of Deep Learning Techniques For The Detection Of Grape Diseases
Plant diseases are one of the major contributors to economic loss in the agriculture industry worldwide. Detection of disease at early stages can help in the reduction of this loss. In recent times, a lot of emphasis has been done on disease detection due to the overall increase in production as well as the loss of grape number. With deep learning, having a promising future and having the advantages of automatic learning and feature extraction, the use of these techniques has now been widely spread. This paper reviewed the existing deep-learning techniques available for grape disease detection. Firstly, covering the various steps in a grape disease detection model ranging from the various sources of image acquisition, the different image augmentation techniques and the various models used, and the parameters required to evaluate. Secondly, the study summarizes the important findings of all literature available on the theme. The paper also tries to highlight the various challenges faced by the researchers and the common trend among them, so that future research on the topic can achieve higher performance.
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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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