Yu Chenghai, Xie Junhao, Tony Fernandes Jean Adrian
Department of Computer Science and Technology, Zhejiang Sci-Tech University, Zhejiang, China.
PLoS One. 2025 May 28;20(5):e0322750. doi: 10.1371/journal.pone.0322750. eCollection 2025.
Given the complexity of crop growth environments in nature, where leaf backgrounds often include soil, weeds, and other plants, along with variable lighting conditions, and considering the small size of leaf spots and the wide variety of crop diseases with significant scale differences, this paper proposes a new BGM-YOLO model structure aimed at improving accuracy and inference speed. First, the GSBottleneck module is utilized to enhance the C2f module of the YOLOv8n model, leading to the introduction of the GSC2f module, which reduces computational costs and increases inference efficiency. Next, the model incorporates a multiscale bitemporal fusion module (BFM) to increase the effectiveness and robustness of feature fusion across different levels. Finally, we developed a median-enhanced spatial and channel attention block (MECS) that combines both channel and spatial attention mechanisms, effectively improving the capture and fusion of small-scale features. The experimental results demonstrate that the BGM-YOLO model achieves a 3.9% improvement in the mean average precision (mAP) over the original model. In crop disease detection tasks, the BGM-YOLO model has higher detection accuracy and a lower false negative rate, confirming its practical value in complex application scenarios.
鉴于自然界中作物生长环境的复杂性,叶片背景通常包括土壤、杂草和其他植物,以及多变的光照条件,同时考虑到叶斑的小尺寸和具有显著尺度差异的多种作物病害,本文提出了一种新的BGM-YOLO模型结构,旨在提高准确率和推理速度。首先,利用GS瓶颈模块增强YOLOv8n模型的C2f模块,从而引入GSC2f模块,该模块降低了计算成本并提高了推理效率。接下来,该模型结合了多尺度双时融合模块(BFM),以提高不同层次特征融合的有效性和鲁棒性。最后,我们开发了一种中值增强空间和通道注意力块(MECS),它结合了通道和空间注意力机制,有效提高了对小尺度特征的捕捉和融合能力。实验结果表明,BGM-YOLO模型的平均精度均值(mAP)比原模型提高了3.9%。在作物病害检测任务中,BGM-YOLO模型具有更高的检测准确率和更低的假阴性率,证实了其在复杂应用场景中的实用价值。