深度学习与农业:一种更快的基于RCNN的辣椒叶枯病检测和多分类方法

Rishabh Sharma, V. Kukreja, D. Bordoloi
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摘要

辣椒叶枯病(PLBD)是一种广泛存在的植物病害,严重影响了全球辣椒的种植。快速检测和准确分类PLBD严重程度对有效控制疾病和优化农业生产力至关重要。本文提出了一种基于更快区域卷积神经网络(R-CNN)的辣椒叶片PLBD高效检测和多分类模型。用于训练和测试模型的数据集由10,000张图像组成。对该模型的检测准确率和多分类准确率进行了评价,分别达到99.39%和98.38%。该模型的计算效率被评估并确定足以部署在实时疾病检测应用中。该模型每张图像的平均推理时间为0.23秒,适合部署在高通量疾病检测应用中。研究结果表明,快速RCNN模型是辣椒叶片PLBD检测和分类的一种成功方法。这有可能提高辣椒种植的病害管理和作物产量。
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Deep Learning Meets Agriculture: A Faster RCNN Based Approach to pepper leaf blight disease Detection and Multi-Classification
Pepper Leaf Blight Disease (PLBD) is a widespread plant ailment that has a severe impact on pepper cultivation across the globe. The rapid detection and precise classification of PLBD severity levels are crucial for efficient disease control and optimal agricultural productivity. The present study introduces a novel model based on Faster region-based convolutional neural network (R-CNN) for the efficient detection and multi-classification of PLBD in pepper leaves. The dataset used for training and testing the model consisted of 10,000 images. The model’s performance was evaluated based on its detection accuracy and multi-classification accuracy, which were found to be 99.39% and 98.38%, respectively. The model’s computational efficiency was assessed and determined to be sufficient for deployment in real-time disease detection applications. The model’s average inference time of 0.23 seconds per image renders it appropriate for deployment in high-throughput disease detection applications. The study’s findings indicate that the faster RCNN model is a successful method for detecting and classifying PLBD in pepper leaves. This has the potential to enhance disease management and crop yield in pepper farming.
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