使用密集网递归卷积神经网络(DNRCNN)进行基于深度学习的苹果果实病害检测

V. Subha, Dr. K. Kasturi
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引用次数: 0

摘要

每年,果实病害都会给苹果产业带来巨大损失。对于种植者来说,识别各种苹果感染病是一项挑战,因为各种疾病的症状往往相似,而且可能会重叠。在这项研究中,我们提出了一种基于深度学习的方法,用于识别和分类苹果病害。调查的第一阶段是生成数据集,包括数据收集和数据标注。然后,我们在准备好的数据集上训练了一个基于深度学习的密集网络递归卷积神经网络(DNRCNN)模型,用于自动对苹果病害进行分类。端到端学习算法 DNRCNN 适用于一系列任务,包括图像分类、物体检测和分割,因为它能自动从源图像中提取复杂特征并直接学习这些特征。利用迁移学习初始化拟议深度模型的参数。为了避免过度拟合,还使用了旋转、平移、反射和缩放等数据增强技术。在准备好的数据集上,所提出的密集网递归卷积神经网络(DNRCNN)模型取得了可喜的成果,准确率约为 96%。建议的分类模型捕捉到了一些复杂且有助于检测的图像特征。与现有技术相比,该模型能更有效地学习相邻两层不在同一通道但具有高度相关性的高阶特征。在对所建议的模型进行训练和验证时,取得了较高的训练和验证精度。研究结果支持该方法在对不同苹果病害进行分类方面的实用性,并表明该方法可为果农提供帮助
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning based Apple Fruit Disease Detection using Dense Net Recursive Convolutional Neural Network (DNRCNN)
Every year, fruit diseases cost the apple industry a lot of money. It can be challenging for growers to identify various apple infections because the symptoms of various illnesses are often similar and may overlap. In this study, we suggest a deep learning-based method for identifying and categorizing apple diseases. Dataset generation, which includes data collection and data labelling, is the first stage of the investigation. On the prepared dataset, we then trained a deep learning-based Dense Net Recurrent Convolutional Neural Network (DNRCNN) model for automatically classifying apple diseases. The end-to-end learning algorithm DNRCNN is appropriate for a range of tasks including image classification, object detection, and segmentation because it automatically extracts complex features from source images and learns them directly. Initialize the parameters of the proposed deep model using transfer learning. To avoid over-fitting, data augmentation techniques like rotation, translation, reflection, and scaling are also used. On the prepared dataset, the proposed Dense Net Recursive Convolutional Neural Network (DNRCNN) model achieves promising results, with an accuracy of about 96%. Some of the intricate and helpful image characteristics for detection are captured by the suggested model for classification. The model can learn the higher-order features of two adjacent layers that are not in the same channel but have a high correlation more effectively than existing techniques. High training and validation accuracy have been achieved when training and validating the suggested model. The findings support the method's usefulness in categorizing different apple diseases and show that it can be useful for farmers
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