基于改进U-KAN的田间秸秆覆盖率检测技术
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国家重点研发计划项目(2024YFD1500803)


Field Straw Coverage Detection Method Based on Improved U-KAN
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    摘要:

    准确高效地检测秸秆覆盖率关乎土壤保护和农业可持续发展,然而现有的秸秆覆盖率检测模型易受光照或阴影等自然环境的影响,当秸秆与土地相似度较高时模型精度会大幅下降。针对车载相机拍摄的秸秆图像中秸秆形态各异、光照引起土地泛白、土地颗粒感强或阴影遮挡的问题,本文提出了一种在自然环境下检测不同尺度秸秆的语义分割方法(Unified attention mixed pooling pyramid U-KAN)。本文用深度膨胀可分离卷积替代传统空洞空间金字塔池化的空洞卷积以获取更多秸秆细节信息,并在自适应平均池化的基础上,增加条带池化分支以更好捕获间隔较大秸秆的特征,从而构建混合池化膨胀空间金字塔模块,将该模块应用于主干网络的最高语义层以获取零散分布秸秆的多尺度信息。同时在解码阶段引入统一注意力融合模块以有效恢复秸秆分割边缘的细节信息。试验结果表明,UMU-KAN在本文构建的秸秆数据集上平均交并比为85.36%,平均像素精度为91.71%,优于经典算法Unet、Swin-Unet和DeepLabv3+,其平均交并比相比DeepLabv3+高1.25个百分点,该模型对自然环境下形态各异的秸秆具有更强的分割性能和良好的鲁棒性,此外本文也进一步证明了柯尔莫戈洛夫-阿诺尔德网络(Kolmogorov-Arnold network,KAN)在农业视觉领域的发展潜力。

    Abstract:

    Accurately and efficiently detecting straw coverage is crucial for soil protection and sustainable agriculture, as straw coverage not only affects soil fertility and moisture retention but also plays a key role in controlling soil erosion and improving the ecological environment. However, existing straw coverage detection models are often susceptible to interference from natural environmental factors such as lighting and shadows in practical applications. When the similarity between the straw and the soil in terms of color and texture is high, the accuracy of these models significantly decreases, leading to inaccurate coverage assessments and ultimately affecting the efficiency and reliability of farmland management decisions. Aiming to address the challenges posed by the diverse morphology of straw in images captured by vehicle-mounted cameras, including issues of image reflection and shadows, a novel semantic segmentation method called UMU-KAN for detecting straw of varying scales in natural environments was proposed. The replacement of conventional dilated convolutions in the atrous spatial pyramid pooling module with depth-wise dilated separable convolutions was proposed to enhance the extraction of fine-grained straw-related detail information. Additionally, a strip pooling branch captured features of widely spaced straw more effectively, integrating feature information from various branches through skip connections to reduce information loss. This series of improvements constructed a mixed pooling dilated spatial pyramid module, applied to the top semantic layer of the backbone network, thereby obtaining multi-scale information for sparsely distributed straw. Furthermore, a unified attention fusion module appeared during the decoding phase to effectively restore detailed edge information of straw segmentation, enabling the model to better learn features from different levels. Experimental results demonstrated that UMU-KAN achieved a mean intersection over union (mIoU) of 85.36% and a mean pixel accuracy (mPA) of 91.71% on the constructed straw dataset. Compared with the Unet, Swin-Unet, and DeepLabv3+ models, UMU-KAN improved mIoU by 4.20, 3.26, and 1.25 percentage points, respectively, and mPA by 3.58, 2.39, and 0.77 percentage points, respectively. Additionally, the parameter count of UMU-KAN was significantly lower than that of Swin-Unet and DeepLabv3+. UMU-KAN successfully achieved accurate detection of straw in images captured by agricultural machinery cameras, ensuring high detection efficiency even under dynamic and uncontrolled outdoor conditions. This not only highlighted the model’s adaptability and precision but also further demonstrated the significant developmental potential of the KAN architecture in the field of precision agriculture, contributing to the promotion of sustainable agricultural practices and enhancing the efficiency of agricultural management.

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马钦,陈子霖,王昊天,刘哲,张凯,史晓晨,李海龙,张婧芳,吴才聪.基于改进U-KAN的田间秸秆覆盖率检测技术[J].农业机械学报,2026,57(4):309-316. MA Qin, CHEN Zilin, WANG Haotian, LIU Zhe, ZHANG Kai, SHI Xiaochen, LI Hailong, ZHANG Jingfang, WU Caicong. Field Straw Coverage Detection Method Based on Improved U-KAN[J]. Transactions of the Chinese Society for Agricultural Machinery,2026,57(4):309-316.

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  • 收稿日期:2025-04-21
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  • 在线发布日期: 2026-02-15
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