Large-scale and fine-grained extraction of agricultural parcels from very-high-resolution (VHR) imagery is essential for precision agriculture. However, traditional parcel segmentation methods and fully supervised deep learning approaches typically face scalability constraints due to costly manual annotations, while extraction accuracy is generally limited by the inadequate capacity of segmentation architectures to represent complex agricultural scenes. To address these challenges, this study proposes a Weakly Supervised approach for agricultural Parcel Extraction (WSPE), which leverages publicly available 10 m resolution images and labels to guide the delineation of 0.5 m agricultural parcels. The WSPE framework integrates the tabular (Tabular Prior-data Fitted Network, TabPFN) and the vision foundation model (Segment Anything Model 2, SAM2) to initially generate pseudo-labels with high geometric precision. These pseudo-labels are further refined for semantic accuracy through an adaptive noisy label correction module based on curriculum learning. The refined knowledge is distilled into the proposed Triple-branch Kolmogorov-Arnold enhanced Boundary-aware Network (TKBNet), a prompt-free end-to-end architecture enabling rapid inference and scalable deployment, with outputs vectorized through post-processing. The effectiveness of WSPE was evaluated on a self-constructed dataset from nine agricultural zones in China, the public AI4Boundaries and FGFD datasets, and three large-scale regions: Zhoukou, Hengshui, and Fengcheng. Results demonstrate that WSPE and its integrated TKBNet achieve robust performance across datasets with diverse agricultural scenes, validated by extensive comparative and ablation experiments. The weakly supervised approach achieves 97.7 % of fully supervised performance, and large-scale deployment verifies its scalability and generalization, offering a practical solution for fine-grained, large-scale agricultural parcel mapping. Code is available at https://github.com/zhaowenpeng/WSPE.
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