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Lightweight Multispectral Crop-Weed Segmentation for Precision Agriculture

Abstract

Efficient crop-weed segmentation is critical for site-specific weed control in precision agriculture. Conventional CNN-based methods struggle to generalize and rely on RGB imagery, limiting performance under complex field conditions. To address these challenges, we propose a lightweight transformer-CNN hybrid. It processes RGB, Near-Infrared (NIR), and Red-Edge (RE) bands using specialized encoders and dynamic modality integration. Evaluated on the WeedsGalore dataset, the model achieves a segmentation accuracy (mean IoU) of 78.88%, outperforming RGB-only models by 15.8 percentage points. With only 8.7 million parameters, the model offers high accuracy, computational efficiency, and potential for real-time deployment on Unmanned Aerial Vehicles (UAVs) and edge devices, advancing precision weed management.

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@article{galymzhankyzy2025_2505.07444,
  title={ Lightweight Multispectral Crop-Weed Segmentation for Precision Agriculture },
  author={ Zeynep Galymzhankyzy and Eric Martinson },
  journal={arXiv preprint arXiv:2505.07444},
  year={ 2025 }
}
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