基于双分辨率与多注意力机制的棉花叶片色素腺体识别模型OA
Recognition Model for Pigment Glands in Cotton Leaves Based on Dual-resolution and Multi-attention Mechanisms
棉花色素腺体中富含棉酚,棉酚在农业害虫防控和医学药理研究等领域具有重要价值.精准获取色素腺体的面积和数量信息是评估棉酚含量的关键.色素腺体体积小、数量多、分布致密,在整幅叶片图像中所占比例较低,且易受叶脉和背景噪声等干扰,实现棉花叶片色素腺体的快速、准确识别面临挑战.针对上述难题,本研究设计了一种便携式野外棉花叶片图像采集装置,能够在无损情况下获取背景简洁的高质量棉花叶片图像;同时,提出了一种轻量化语义分割网络Dual-GlandNet,该模型仅对高、低分辨率分支进行部分跨分辨率特征交互,在高分辨率分支中引入CBAM注意力模块,增强对细粒度的表达能力,低分辨率分支中加入CoordAtt坐标注意力模块和3 路可分离空洞卷积Lite SepPP,强化全局语义特征能力.实验结果表明,所提出的Dual-GlandNet模型mIoU为80.6%,F1 分数达到86.5%,单幅图像平均推理时间约 17 ms,参数量仅 6.79×106.与其他主流语义分割模型相比,本文模型在精度与速度之间实现了更优权衡,为棉花叶片色素腺体实时、无损检测提供了可部署的技术方案,对棉花叶片棉酚含量评估、优质品种选育及精准田间管理具有重要意义.
Cotton pigment glands are rich in gossypol,which holds significant value in agricultural pest control,medical pharmacology research,and other fields.Accurately obtaining information on the area and quantity of pigment glands is the key to evaluating gossypol content.However,pigment glands are small in size,numerous in number,and densely distributed.They account for a very low proportion in the entire leaf image and are easily interfered by leaf veins and background noise.Therefore,the rapid and accurate identification of pigment glands in cotton leaves remains challenging.To address the above problems,a portable field device for acquiring cotton leaf images was developed,which can obtain high-quality images with a simple background without damaging the cotton leaves.Meanwhile,a lightweight semantic segmentation network named Dual-GlandNet was proposed.This model only conducted partial cross-resolution feature interaction for high and low resolution branches.Specifically,the CBAM attention module was introduced into the high resolution branch to enhance the expression ability of fine-grained features.For the low-resolution branch,the CoordAtt coordinate attention module and the three-way separable dilated convolution Lite SepPP were added to strengthen the capability of global semantic feature extraction.Experimental results showed that the proposed Dual-GlandNet model achieved a mean intersection over union(mIoU)of 80.6%,the F1-score of 86.5%,an inference time of approximately 17 ms per image,and a parameter count of only 6.79×106.Compared with other mainstream semantic segmentation models,this model achieved a better balance between accuracy and speed,providing a deployable technical solution for real-time and non-destructive detection of pigment glands in cotton leaves.It was of great significance for assessing gossypol content in cotton leaves,breeding high-quality varieties,and implementing precise field management.
邵利敏;闫庚;耿玉红;张怡;王国宁
河北农业大学机电工程学院,保定 071001||河北省智慧农业装备技术创新中心,保定 071001河北农业大学机电工程学院,保定 071001河北农业大学机电工程学院,保定 071001河北农业大学机电工程学院,保定 071001河北农业大学农学院,保定 071001
农业科技
棉花棉酚色素腺体识别模型语义分割轻量化
cottongossypolpigment glandrecognition modelsemantic segmentationlightweight
《农业机械学报》 2026 (5)
353-363,11
中央引导地方科技发展资金项目(246Z7403G)和华北作物改良与调控国家重点实验室自主研究课题(NCCIR2022ZZ-15)
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