BACKGROUND: Accurate crop-weed segmentation is critical for precision spraying but is hindered by visual similarity and occlusion. This study aims to develop a lightweight yet high-accuracy multispectral segmentation network to address these challenges. RESULTS: We propose ASVLB-Net, a novel lightweight multiscale feature extraction network guided by normalized difference vegetation index (NDVI) priors for crop-weed segmentation in multispectral imagery. First, we design the Adaptive Spectral-Vegetation Fusion (ASVF) module at the input stage. It achieves adaptive allocation of spectral and spatial features, enhancing the discriminability of vegetation regions. Additionally, we adopt a U-shaped architecture based on the Layer-wise Concatenated Multi-Scale Feature (LCMF) encoder. It efficiently extracts fine-grained features and boundary information with low computational cost. Finally, we use the Bottleneck -SCSA (Spatial and Channel Synergistic Attention) module to capture long-range dependencies, improving segmentation in overlapping areas. Experimental results demonstrate that ASVLB-Net achieves a mean intersection over union (mIOU) of 86.5% and a mean precision of 91.89%, outperforming several state-of-the-art (SOTA) models, while maintaining high efficiency with only 0.47 million parameters. CONCLUSION: The ASVLB-Net significantly improves segmentation accuracy and robustness in unmanned aerial vehicle (UAV) multispectral imagery, offering a robust solution for precision weeding applications. © 2026 Society of Chemical Industry.
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Zhengtong Dong
Dalian University of Foreign Languages
Zhenhua Mu
Liaoning Normal University
Jie Ji
Dalian University of Foreign Languages
Pest Management Science
Dalian University of Technology
Dalian University
Dalian University of Foreign Languages
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Dong et al. (Tue,) studied this question.
synapsesocial.com/papers/69fd7fb8bfa21ec5bbf0853a — DOI: https://doi.org/10.1002/ps.70881