改进yolo4向日葵叶片病害的检测方法

Si Chen, Fang Lv, Ping Huo
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摘要

为了提高内蒙古地区向日葵叶片病害自动检测识别的及时性和准确性,本研究采用改进的Yolov4模型对向日葵叶片黄萎病、白粉病和锈病三种病害进行检测识别。首先,利用K-means聚类算法对向日葵病害样本进行聚类,生成新的锚盒大小,使Yolov4网络模型的锚盒更适合于检测向日葵叶片上较小的目标病变;其次,定义MobileNetV1、MobileNetV2和MobileNetV3三种网络功能,得到每个MobileNet网络对应的三个有效特征层,并使用这三个有效特征层替代原有Yolov4骨干网CSP-Darknet53的有效特征层作为骨干网特征提取网络。实验结果表明,本文提出的改进方法与原Yolov4模型相比,准确率和召回率均有显著提高。因此,改进的Yolov4算法训练的深度学习模型具有更好的鲁棒性,更适合于向日葵叶片病害检测。
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Improved detection of yolov4 sunflower leaf diseases
In order to improve the timeliness and accuracy of the automatic detection and recognition of sunflower leaf diseases in Inner Mongolia, this study used an improved Yolov4 model to detect and recognize the three diseases of sunflower leaf verticillium wilt, powdery mildew and rust. First, use the K-means clustering algorithm to cluster sunflower disease samples to generate a new anchor box size, making the anchor box of the Yolov4 network model more suitable for the detection of smaller target lesions on sunflower leaves; secondly, define the three network functions of MobileNetV1, MobileNetV2 and MobileNetV3, obtain three effective feature layers corresponding to each MobileNet network, and use these three effective feature layers to replace the effective feature layer of the original Yolov4 backbone network CSP-Darknet53 as the backbone feature extraction network. The experimental results show that the accuracy and recall of the improved method proposed in this paper are significantly improved compared with the original Yolov4 model. Therefore, the deep learning model trained by the improved Yolov4 algorithm has better robustness and is more suitable for sunflower leaf disease detection.
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