基于改进Faster RCNN的茶叶叶部病害识别
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华南农业大学

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TP391.4;S345.711

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广东省重点领域研发计划项目(2023B0202100001)


Recognition of tea leaf disease based on improved Faster RCNN
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    摘要:

    针对茶园背景复杂、茶病害尺度不一且存在极小的病斑、易出现漏检误检等问题,提出一种基于改进 Faster RCNN模型的茶叶叶部病害识别方法。通过对优化了区域建议框的特征提取网络VGG-16、mobilenetv2和ResNet50进行比较,选择效果好的ResNet50作为骨干网络;融入FPN网络,以改善小目标漏检问题和病斑的多尺度问题;采用Rank & Sort (RS) Loss 函数代替原 Faster RCNN 中的损失函数,缓解样本分布不均给模型带来的性能影响。结果显示:本研究提出的模型平均精度均值mAP为88.06%,检测速度达19.1帧/s,对藻斑病、白星病、炭疽病、煤烟病识别的平均精度分别为75.54%、86.84%、90.42%、99.45% ,比原始Faster RCNN模型分别提高40.98%、44.16%、13.9%和2.43%。结果表明,本研究能够很好的检测识别茶园复杂背景下茶叶叶部病害,满足茶叶叶部病害检测要求,可为自然环境下茶叶病害检测提供参考,对茶叶病害预防有重要研究意义。

    Abstract:

    Aiming at the problems such as complex tea garden background, different scale of tea diseases, minimal disease spots and easy to miss and misdetect, an improved Faster RCNN model was proposed to identify tea leaf diseases.By comparing the feature extraction network VGG-16, mobilenetv2 and ResNet50 with optimized region suggestion frame, ResNet50 is selected as the backbone network with good effect;FPN network is integrated to improve the problem of missing detection of small targets and multi-scale problem of disease spots;Rank & Sort (RS) Loss function is used to replace the loss function in the original Faster RCNN to alleviate the impact of uneven sample distribution on model performance.The results show: The average precision mAP of the model proposed in this study was 88.06%, the detection speed was 19.1 frames /s, and the average accuracy of the identification of algal spot, white star disease, anthrax and soot disease was 75.54%, 86.84%, 90.42% and 99.45%, respectively. Compared with the original Faster RCNN model, the improvements were 40.98%, 44.16%, 13.9% and 2.43%, respectively.The results showed that this study could well detect and identify tea leaf diseases under the complex background of tea gardens, meet the requirements of tea leaf disease detection, provide reference for tea disease detection under natural environment, and have important research significance for tea disease prevention.

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  • 收稿日期:2024-01-04
  • 最后修改日期:2024-04-05
  • 录用日期:2024-04-22
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