Wen Chunming, Liu Leilei, Li Shangping, Cheng Yang, Liang Qingquan, Li Kaihua, Huang Youzong, Long Xiaozhu, Nong Hongliang
Guangxi Key Laboratory of Hybrid Computing and Integrated Circuit Design and Analysis, School of Artificial Intelligence, Guangxi University for Nationalities, Nanning, China.
Guangxi Zhuang Autonomous Region Intelligent Visual Collaborative Robot Engineering Research Center, Nanning, China.
PLoS One. 2025 Sep 18;20(9):e0332870. doi: 10.1371/journal.pone.0332870. eCollection 2025.
Sugarcane stem node detection is critical for monitoring sugarcane growth, enabling precision cutting, reducing spuriousness, and improving breeding for resistance to downfall. However, in complex field environments, sugarcane stem nodes often suffer from reduced detection accuracy due to background interference and shadowing effects. For this reason, this paper proposes an improved sugarcane stem node detection model based on YOLO11. This study incorporates the ASF-YOLO (Attentional Scale Sequence Fusion based You Only Look Once) mechanism to enhance the feature fusion layer of YOLO11. Additionally, a high-resolution detection layer, P2, is integrated into the fusion module to improve the model's ability to detect small objects-particularly sugarcane stem nodes-and to better handle multi-scale feature representations. Secondly, to better align with the P2 small-object detection layer, this paper adopts a shared convolutional detection head named LSDECD (Lightweight Shared Detail-Enhanced Convolutional Detection Head), which can better deal with small target detection while reducing the number of model parameters through parameter sharing and detail-enhanced convolution. Using soft-NMS (non-maximum suppression) to replace the original NMS and combining with Shape-IoU, a bounding box regression method that focuses on the shape and scale of the bounding box itself, makes the bounding box regression more accurate, and solves the problem of the impact of detection caused by occlusion and illumination. Finally, to address the increased complexity introduced by the addition of the P2 detection layer and the replacement of the detection head, channel pruning is applied to the model, effectively reducing its overall complexity and parameter count. The experimental results show that the model before pruning has 96.1% and 53.2% mean average precision mAP50 and mAP50:95, respectively, which are 11.9% and 11.1% higher than the original YOLO11n, and the model after pruning also has 10.8% and 9.3% higher than the original YOLO11n, respectively, and the number of parameters is reduced to 279,778, and model size is reduced to 1.3MB. The computational cost decreased from 11.6 GFlops to 6.6 GFlops.
甘蔗茎节检测对于监测甘蔗生长、实现精准切割、减少杂质以及改良抗倒伏育种至关重要。然而,在复杂的田间环境中,由于背景干扰和阴影效应,甘蔗茎节的检测精度常常会降低。因此,本文提出了一种基于YOLO11的改进型甘蔗茎节检测模型。本研究引入了ASF-YOLO(基于注意力尺度序列融合的你只看一次)机制来增强YOLO11的特征融合层。此外,将高分辨率检测层P2集成到融合模块中,以提高模型检测小物体(特别是甘蔗茎节)的能力,并更好地处理多尺度特征表示。其次,为了更好地与P2小物体检测层对齐,本文采用了一种名为LSDECD(轻量级共享细节增强卷积检测头)的共享卷积检测头,它在通过参数共享和细节增强卷积减少模型参数数量的同时,能够更好地处理小目标检测。使用软非极大值抑制(soft-NMS)取代原始的非极大值抑制,并结合Shape-IoU(一种关注边界框本身形状和尺度的边界框回归方法),使边界框回归更加准确,解决了遮挡和光照对检测造成影响的问题。最后,为了解决添加P2检测层和替换检测头带来的复杂度增加问题,对模型应用了通道剪枝,有效降低了其整体复杂度和参数数量。实验结果表明,剪枝前的模型平均精度均值mAP50和mAP50:95分别为96.1%和53.2%,比原始的YOLO11n分别高11.9%和11.1%,剪枝后的模型也分别比原始的YOLO11n高10.8%和9.3%,参数数量减少到279,778,模型大小减少到1.3MB。计算成本从11.6 GFlops降至6.6 GFlops。