
农业大数据学报 ›› 2026, Vol. 8 ›› Issue (2): 141-154.doi: 10.19788/j.issn.2096-6369.000145
• 数据智能 • 下一篇
收稿日期:2026-12-11
接受日期:2026-03-09
出版日期:2026-06-26
发布日期:2026-06-26
通讯作者:
杨抒,E-mail:yangshu@cdu.edu.cn。作者简介:肖吟枫,E-mail:1746020957@qq.com。
Received:2026-12-11
Accepted:2026-03-09
Published:2026-06-26
Online:2026-06-26
摘要:
针对柑橘叶部病害检测中精度不足、病斑细小易混淆、果园背景复杂等问题,提出一种轻量化检测算法(AGLU-YOLO)。该方法在主干网络C3k2模块中融合AdditiveBlock与卷积门控线性单元(CGLU)共同构成 C3k2_AdditiveBlock_CGLU 模块,前者以加性建模增强长程依赖与全局上下文表征,后者通过深度可分离3×3卷积与点卷积实现条件门控,抑制复杂纹理导致的误激活并强化小尺度病斑响应;同时在特征融合阶段加入AFCA注意力机制以提升跨层语义交互与多尺度鲁棒性。其次为满足边缘部署需求,采用LAMP分层重要度剪枝算法对通道/层级进行联合压缩,并进行轻量微调以恢复精度;随后将模型导出为ONNX并通过TensorRT实施算子融合与低精度推理优化,实现低时延、高吞吐的实时检测。通过在自制数据集实验验证,AGLU-YOLO在Precision、Recall与mAP@0.5指标上相较基线YOLOv11n分别提高3.1、4.4与5.1个百分点,且兼顾体积与识别速度,展现出更强的鲁棒性与多尺度病斑适应性,可有效满足柑橘叶病快速、准确识别的应用需求。
肖吟枫, 杨抒. AGLU-YOLO:轻量化柑橘叶片病害实时检测算法研究[J]. 农业大数据学报, 2026, 8(2): 141-154.
XIAO YinFeng, YANG Shu. AGLU-YOLO: Research on Real-time Detection Algorithm of Lightweight Citrus Leaf Disease[J]. Journal of Agricultural Big Data, 2026, 8(2): 141-154.
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