Zhang Fan, Zhao Longgang, Wang Dongwei, Wang Jiasheng, Smirnov Igor, Li Juan
College of Mechanical and Electrical Engineering, Qingdao Agricultural University, Qingdao, China.
College of Grassland Science, Qingdao Agricultural University, Qingdao, China.
Front Plant Sci. 2024 Nov 7;15:1434968. doi: 10.3389/fpls.2024.1434968. eCollection 2024.
The emergence rate of crop seedlings is an important indicator for variety selection, evaluation, field management, and yield prediction. To address the low recognition accuracy caused by the uneven size and varying growth conditions of crop seedlings under salt-alkali stress, this research proposes a peanut seedling recognition model, MS-YOLOv8.
This research employs close-range remote sensing from unmanned aerial vehicles (UAVs) to rapidly recognize and count peanut seedlings. First, a lightweight adaptive feature fusion module (called MSModule) is constructed, which groups the channels of input feature maps and feeds them into different convolutional layers for multi-scale feature extraction. Additionally, the module automatically adjusts the channel weights of each group based on their contribution, improving the feature fusion effect. Second, the neck network structure is reconstructed to enhance recognition capabilities for small objects, and the MPDIoU loss function is introduced to effectively optimize the detection boxes for seedlings with scattered branch growth.
Experimental results demonstrate that the proposed MS-YOLOv8 model achieves an AP50 of 97.5% for peanut seedling detection, which is 12.9%, 9.8%, 4.7%, 5.0%, 11.2%, 5.0%, and 3.6% higher than Faster R-CNN, EfficientDet, YOLOv5, YOLOv6, YOLOv7, YOLOv8, and RT-DETR, respectively.
This research provides valuable insights for crop recognition under extreme environmental stress and lays a theoretical foundation for the development of intelligent production equipment.
作物幼苗的出苗率是品种选择、评估、田间管理和产量预测的重要指标。为了解决盐碱胁迫下作物幼苗大小不均和生长条件各异导致的识别准确率低的问题,本研究提出了一种花生幼苗识别模型,即MS-YOLOv8。
本研究采用无人机近距离遥感技术对花生幼苗进行快速识别和计数。首先,构建了一个轻量级自适应特征融合模块(称为MSModule),该模块对输入特征图的通道进行分组,并将其输入到不同的卷积层进行多尺度特征提取。此外,该模块根据每组的贡献自动调整通道权重,提高了特征融合效果。其次,对颈部网络结构进行了重构,以增强对小目标的识别能力,并引入了MPDIoU损失函数,有效地优化了具有分散分支生长的幼苗的检测框。
实验结果表明,所提出的MS-YOLOv8模型在花生幼苗检测中实现了97.5%的AP50,分别比Faster R-CNN、EfficientDet、YOLOv5、YOLOv6、YOLOv7、YOLOv8和RT-DETR高12.9%、9.8%、4.7%、5.0%、11.2%、5.0%和3.6%。
本研究为极端环境胁迫下的作物识别提供了有价值的见解,为智能生产设备开发奠定了理论基础。