Multi-task learning has been widely applied in visual learning to significantly enhance performances. The combination of hyperspectral change detection (HCD) and band reweighting can achieve discriminative feature enhancement for improving detection performance. However, existing multi-task models for these two tasks are unidirectional, with band reweighting unable to learn from task guidance. To address this challenge, a multi-task HCD framework with differential band reweighting and unbalanced contrastive learning (MHCD) is proposed. MHCD consists of a differential band reweighting network (DBRN) and a Siamese detection network. DBRN extracts discriminative information for HCD by analyzing the differential spatial-spectral information across time states, whose optimization is under the guidance of HCD. Furthermore, a multi-temporal interaction module and multi-domain fusion module are inserted into the Siamese detection network. They hierarchically connect cross-temporal features and fuse features from spatial, spectral, and temporal domains, providing complementary clues in these different domains. Considering the sample imbalance and enormous variation within a class in binary HCD, an unbalanced contrastive learning method based on multiple prototypes is tailored has been considered. It estimates multiple prototypes to flexibly adjust the contribution of different classes of samples to the loss. The proposed method has been validated using three public benchmark datasets, demonstrating improvements in multiple metrics for change detection.

A multi-task framework for hyperspectral change detection and band reweighting with unbalanced contrastive learning

Gamba P.;
2024-01-01

Abstract

Multi-task learning has been widely applied in visual learning to significantly enhance performances. The combination of hyperspectral change detection (HCD) and band reweighting can achieve discriminative feature enhancement for improving detection performance. However, existing multi-task models for these two tasks are unidirectional, with band reweighting unable to learn from task guidance. To address this challenge, a multi-task HCD framework with differential band reweighting and unbalanced contrastive learning (MHCD) is proposed. MHCD consists of a differential band reweighting network (DBRN) and a Siamese detection network. DBRN extracts discriminative information for HCD by analyzing the differential spatial-spectral information across time states, whose optimization is under the guidance of HCD. Furthermore, a multi-temporal interaction module and multi-domain fusion module are inserted into the Siamese detection network. They hierarchically connect cross-temporal features and fuse features from spatial, spectral, and temporal domains, providing complementary clues in these different domains. Considering the sample imbalance and enormous variation within a class in binary HCD, an unbalanced contrastive learning method based on multiple prototypes is tailored has been considered. It estimates multiple prototypes to flexibly adjust the contribution of different classes of samples to the loss. The proposed method has been validated using three public benchmark datasets, demonstrating improvements in multiple metrics for change detection.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11571/1505657
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