HieraRS: A Hierarchical Segmentation Paradigm for Remote Sensing Enabling Multi-Granularity Interpretation and Cross-Domain Transfer
Tianlong Ai, Tianzhu Liu, Haochen Jiang, and Yanfeng Gu

TL;DR
HieraRS introduces a hierarchical land cover classification paradigm that enhances multi-granularity predictions and cross-domain transferability in remote sensing imagery, addressing limitations of flat classification models.
Contribution
The paper proposes HieraRS with BHCCM for hierarchical predictions and TransLU for cross-domain transfer, along with a new large-scale multi-modal hierarchical land use dataset.
Findings
Improved semantic consistency and accuracy in hierarchical predictions.
Effective transfer of models across heterogeneous hierarchies.
Introduction of a large-scale multi-modal hierarchical land use dataset.
Abstract
Hierarchical land cover and land use (LCLU) classification aims to assign pixel-wise labels with multiple levels of semantic granularity to remote sensing (RS) imagery. However, existing deep learning-based methods face two major challenges: 1) They predominantly adopt a flat classification paradigm, which limits their ability to generate end-to-end multi-granularity hierarchical predictions aligned with tree-structured hierarchies used in practice. 2) Most cross-domain studies focus on performance degradation caused by sensor or scene variations, with limited attention to transferring LCLU models to cross-domain tasks with heterogeneous hierarchies (e.g., LCLU to crop classification). These limitations hinder the flexibility and generalization of LCLU models in practical applications. To address these challenges, we propose HieraRS, a novel hierarchical interpretation paradigm that…
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