中国农业机械化科学研究院集团有限公司 主管

北京卓众出版有限公司 主办

基于改进YOLOv7的荔枝叶片病害监测模型

Litchi leaf disease monitoring model based on improved YOLOv7

  • 摘要: 为在复杂自然环境背景下准确及时地检测到荔枝病害中的炭疽病,提出基于改进YOLOv7的荔枝病害识别方法。通过重构SPPCSPC结构,裁剪卷积层并更改池化结构,降低模块复杂度,加快网络收敛速度;为合理分配资源,引入GAM注意力机制;为提升检测精度,采用WIoU损失函数。试验结果表明,改进YOLOv7在检测单张图像时耗时0.18 s,内存使用量41.45 MB,平均精度均值达到80.27%。相比YOLOv7,内存使用量减少34.5%,检测速度加快60%,模型性能优于Faster R-CNN、YOLOv5等。该方法能在复杂的自然环境和非结构化背景中,对荔枝病害目标进行精准且迅速的检测,为经济果树叶片病害的实时监测研究提供借鉴。

     

    Abstract: To accurately and promptly detect litchi anthracnose among complex natural environmental conditions, a litchi disease recognition method with improved YOLOv7 was proposed.SPPCSPC structure was reconstructed, convolutional layers were pruned, and pooling structure was modified to reduce module complexity and accelerate network convergence speed.To allocate resources reasonably, GAM attention mechanism was introduced.To improve detection accuracy, WIoU loss function was employed.Experimental results indicated that improved YOLOv7 took 0.18 s to detect a single image, with a memory usage of 41.45 MB, and an average accuracy mean of 80.27%.Compared to YOLOv7, memory usage was reduced by 34.5%, detection speed was increased by 60%, and model performance outperformed other models such as Faster R-CNN and YOLOv5.This method provided accurate and rapid detection of litchi disease targets in complex natural environments and unstructured backgrounds, and provided a reference for real-time monitoring research of economic fruit tree leaf diseases.

     

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