The effect of improvement of datasets on accuracy achievement in deep learning: an example of disease detection in hops plant

Haluk Tanrıkulu, M. H. Sazli, Hasan Parça
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Abstract

Plant diseases are a major threat to food safety and security. Preventing the loss of money and time is possible with early diagnosis of plant diseases. Recent advances in computer vision have led to successful methods for the early detection of plant diseases. In this research, images of downy mildew (Pseudoperonospora humuli) and powdery mildew (Podosphaera macularis) diseases of hops (Humulus lupulus - hops) plant were collected over the internet and classified with the most successful Convolutional Neural Network (CNN) model. In order to increase the performance of the CNN model, images that do not contribute to learning were removed from the datasets, and optimum datasets were created by adding new images that comply with the rules we determined. The model was trained with a small number of selected images and detected downy mildew and powdery mildew diseases of hops with high performance. In this study, certain rules were determined in the recognition of plant diseases, the collection of diseased leaf images and the creation of the data set. It has been shown that training datasets created by following these rules increase performance in learning.
数据集改进对深度学习准确度的影响——以啤酒花病害检测为例
植物病害是对食品安全和保障的重大威胁。通过对植物病害的早期诊断,可以防止金钱和时间的损失。计算机视觉的最新进展导致了植物疾病早期检测的成功方法。本研究通过网络采集啤酒花(Humulus lupulus - hops)植物的霜霉病(Pseudoperonospora humuli)和白粉病(Podosphaera macularis)病害图像,并用最成功的卷积神经网络(CNN)模型进行分类。为了提高CNN模型的性能,从数据集中去除对学习没有贡献的图像,并通过添加符合我们确定的规则的新图像来创建最优数据集。采用少量精选图像对模型进行训练,对啤酒花霜霉病和白粉病的检测效果较好。本研究在植物病害的识别、病叶图像的采集以及数据集的创建等方面确定了一定的规则。已经证明,遵循这些规则创建的训练数据集可以提高学习性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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