Deep Learning-Based Rice Leaf Diseases Detection Using Yolov5

Muhammad Juman Jhatial, Dr Riaz Ahmed Shaikh, Noor Ahmed Shaikh, Samina Rajper, Rafaqat Hussain Arain, Ghulam Hussain Chandio, Abdul Qadir Bhangwar, Hidayatullah Shaikh, Kashif Hussain Shaikh
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引用次数: 7

Abstract

The Rice crop in Agriculture field is playing an important role in economy of Pakistan and fulfilling the needs of living hood of human beings. The rice leaf faces several diseases like Bacterial Bligh, Brown Spot, Blast and Tungro. This research attempts to create a simple and best model for Rice leaf disease detection using deep learning model Yolov5. The model has been upgraded to v5 which is the latest version of Yolo. The performance and accuracy of object detection using Yolov5 is better than Yolov3 and Yolov4 models. This model is able to differentiate and successfully detect the rice leaf diseases. The Rice leaf images Dataset is downloaded from Kaggle website, the dataset contains 400 images of leaf infected by disease. This paper uses Google colab platform to train, validate and test the model for Rice Leaf disease detection. All necessary steps to be implemented, the rice leaf disease are detected and fully described. The developed model utilize epochs: 100. The experimental results show that the deep learning model created with 100 epochs has shown the best performance with precision, recall, and mAP value of 1.00, 0.94, and 0.62, respectively.
基于Yolov5深度学习的水稻叶片病害检测
农业领域的水稻作物在巴基斯坦的经济中发挥着重要作用,满足了人们的生活需要。水稻叶片面临白叶枯病、褐斑病、稻瘟病和桐病等病害。本研究试图利用深度学习模型Yolov5创建一个简单且最佳的水稻叶病检测模型。该型号已经升级到v5,这是Yolo的最新版本。使用Yolov5模型进行目标检测的性能和精度均优于Yolov3和Yolov4模型。该模型能够区分并成功检测水稻叶片病害。水稻叶片图像数据集是从Kaggle网站下载的,该数据集包含400张被病害感染的叶片图像。本文利用谷歌colab平台对水稻叶病检测模型进行训练、验证和测试。采取一切必要措施,对水稻叶病进行检测和充分描述。所开发的模型利用了100个epoch。实验结果表明,100 epoch深度学习模型的准确率、召回率和mAP值分别为1.00、0.94和0.62,表现出最好的性能。
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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