首页|期刊导航|农业机械学报|基于先验嵌入与多尺度特征融合的耕后水稻单根秸秆语义分割方法

基于先验嵌入与多尺度特征融合的耕后水稻单根秸秆语义分割方法OA

Semantic Segmentation of Individual Straw Stalks after Plowing Based on Prior Embedding and Multi-scale Feature Fusion

中文摘要英文摘要

耕后土壤表面秸秆覆盖率是评估秸秆还田质量的重要参数,现有方法难以有效识别水稻单根秸秆,为此提出一种融合先验嵌入与多尺度特征融合的语义分割方法,以实现水稻单根秸秆的准确识别.采用基于颜色距离的固定阈值分割法对原始图像进行预处理并生成先验图,在抑制背景干扰情况下为后续识别任务提供先验信息输入;设计了一种改进U-Net的MRCF-DA-CDPE模型,采用并行多尺度卷积捕获从细碎秸秆到大型秸秆聚集区等不同尺度的信息特征,利用通道与空间注意力筛选关键特征并抑制土壤亮斑等干扰,将预处理中的连续距离信息作为额外输入通道嵌入网络,为模型分割提供物理引导.图像预处理策略表明,该方法使各基础模型的平均精度提升了2~4个百分点,其中U-Net的识别精度最高.改进模型验证试验表明,MRCF-DA-CDPE模型的平均交并比、平均精度和Kappa系数分别达到了86.93%、94.89%和0.850 2,相比基础U-Net模型分别提升了2.72、2.98个百分点和0.056 7.本方法实现了对单根秸秆的精细识别,可为秸秆还田质量检测、耕整效果评估等提供技术支撑.

Straw coverage on the soil surface after tillage is a key parameter for evaluating the quality of straw return to the field.Existing methods struggle to effectively identify individual rice straw stalks.To address this,a semantic segmentation method that integrated prior embedding with multi-scale feature fusion was proposed to achieve accurate recognition of individual rice straw stalks.A fixed-threshold segmentation method based on color distance was employed to preprocess the original image and generate a prior map,providing prior information input for subsequent recognition tasks while suppressing background interference.An enhanced U-Net model,MRCF-DA-CDPE,was designed.It employed parallel multi-scale convolutions to capture information features across scales-from fragmented straw fragments to large straw clusters-while utilizing channel and spatial attention to select key features and suppress disturbances like soil bright spots.Continuous distance information from preprocessing was embedded into the network as an additional input channel,providing physical guidance for segmentation.Image preprocessing strategies demonstrated that this approach enhanced the average accuracy of each base model by 2~4 percentage points,with U-Net achieving the highest recognition accuracy.Validation tests of the improved model demonstrated that the MRCF-DA-CDPE model achieved 86.93%average intersection-over-union ratio(IOU),94.89%average precision,and 0.850 2 Kappa coefficient,representing improvements of 2.72,2.98 percentage points and 0.056 7 respectively over the baseline U-Net model.This method achieved precise recognition of individual straw stalks,providing technical support for straw return quality inspection and tillage effectiveness evaluation.

王昱;奚小波;丁杰源;韩连杰;邹贇涵;沈辉;张瑞宏

扬州大学机械工程学院,扬州 225127扬州大学机械工程学院,扬州 225127扬州大学机械工程学院,扬州 225127扬州大学机械工程学院,扬州 225127扬州大学机械工程学院,扬州 225127扬州大学机械工程学院,扬州 225127扬州大学机械工程学院,扬州 225127

信息技术与安全科学

水稻秸秆识别语义分割图像分割深度学习U-Net

rice straw recognitionsemantic segmentationimage segmentationdeep learningU-Net

《农业机械学报》 2026 (9)

289-298,10

国家重点研发计划项目(2022YFD1500404)、江苏省重点研发计划项目(BE2022338)、江苏省农业科技自主创新资金项目(CX(24)1026)、江苏省现代农机装备与技术示范推广项目(NJ2025-02)和扬州大学"高端人才支持计划"项目

10.6041/j.issn.1000-1298.2026.09.027

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