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Enhancing Knowledge Transfer in Hyperspectral Image Classification via Cross-scene Knowledge Integration

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Knowledge transfer has strong potential to improve hyperspectral image (HSI) classification, yet two inherent challenges fundamentally restrict effective cross-domain transfer: spectral variations caused by different sensors and semantic inconsistencies across heterogeneous scenes. Existing methods are limited by transfer settings that assume homogeneous domains or heterogeneous scenarios with only co-occurring categories. When label spaces do not overlap, they further rely on complete source-domain coverage and therefore overlook critical target-private information. To overcome these limitations and enable knowledge transfer in fully heterogeneous settings, we propose Cross-scene Knowledge Integration (CKI), a framework that explicitly incorporates target-private knowledge during transfer. CKI includes: (1) Alignment of Spectral Characteristics (ASC) to reduce spectral discrepancies through domain-agnostic projection; (2) Cross-scene Knowledge Sharing Preference (CKSP), which resolves semantic mismatch via a Source Similarity Mechanism (SSM); and (3) Complementary Information Integration (CII) to maximize the use of target-specific complementary cues. Extensive experiments verify that CKI achieves state-of-the-art performance with strong stability across diverse cross-scene HSI scenarios.

Lu Huo, Wenjian Huang, Jianguo Zhang, Min Xu, Haimin Zhang• 2025

Related benchmarks

TaskDatasetResultRank
Hyperspectral Image ClassificationIndian Pines (test)
Overall Accuracy (OA)81.21
83
Hyperspectral Image ClassificationPavia University (PU) HU-to-PU (test)
Overall Accuracy (OA)0.8464
23
Hyperspectral Image ClassificationIndian Pines to Houston Knowledge Transfer (test)
Overall Accuracy (OA)82.82
15
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