IVCVMay 6, 2025

Prototype-Based Information Compensation Network for Multi-Source Remote Sensing Data Classification

arXiv:2505.04003v117 citationsh-index: 27Has CodeIEEE Trans Geosci Remote Sens
Originality Highly original
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This work addresses land cover classification accuracy for remote sensing applications, representing an incremental improvement with a novel method for known bottlenecks.

The paper tackles the challenges of inter-frequency feature coupling and inconsistent complementary information exploration in multi-source remote sensing data classification for land cover, resulting in significant superiority over state-of-the-art methods as demonstrated on three public datasets.

Multi-source remote sensing data joint classification aims to provide accuracy and reliability of land cover classification by leveraging the complementary information from multiple data sources. Existing methods confront two challenges: inter-frequency multi-source feature coupling and inconsistency of complementary information exploration. To solve these issues, we present a Prototype-based Information Compensation Network (PICNet) for land cover classification based on HSI and SAR/LiDAR data. Specifically, we first design a frequency interaction module to enhance the inter-frequency coupling in multi-source feature extraction. The multi-source features are first decoupled into high- and low-frequency components. Then, these features are recoupled to achieve efficient inter-frequency communication. Afterward, we design a prototype-based information compensation module to model the global multi-source complementary information. Two sets of learnable modality prototypes are introduced to represent the global modality information of multi-source data. Subsequently, cross-modal feature integration and alignment are achieved through cross-attention computation between the modality-specific prototype vectors and the raw feature representations. Extensive experiments on three public datasets demonstrate the significant superiority of our PICNet over state-of-the-art methods. The codes are available at https://github.com/oucailab/PICNet.

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