Konsep Inti
The ChangeMamba architecture, based on the Mamba state space model, can efficiently model the global spatial context and spatio-temporal relationships to achieve accurate and efficient change detection in remote sensing images.
Abstrak
The paper explores the application of the Mamba architecture, a state space model-based approach, for remote sensing change detection tasks. It proposes three network frameworks - MambaBCD, MambaSCD, and MambaBDA - tailored for binary change detection, semantic change detection, and building damage assessment, respectively.
Key highlights:
- The Mamba architecture is leveraged to extract robust and representative features from input images by effectively modeling the global spatial context.
- Three spatio-temporal relationship modeling mechanisms are designed to capture the complex interactions between multi-temporal features, which are seamlessly integrated with the Mamba encoder.
- The proposed frameworks outperform current CNN- and Transformer-based approaches on five benchmark datasets for the three change detection subtasks, demonstrating the potential of the Mamba architecture.
- MambaBCD achieves F1 scores of 83.11%, 88.39%, and 94.19% on SYSU, LEVIR-CD+, and WHU-CD datasets.
- MambaSCD obtains a SeK of 24.04% on the SECOND dataset.
- MambaBDA achieves an overall F1 score of 81.41% on the xBD dataset.
Statistik
The paper reports the following key metrics:
On the SYSU dataset, the MambaBCD model achieved a Recall of 83.11%, Precision of 83.11%, and F1 score of 83.11%.
On the LEVIR-CD+ dataset, the MambaBCD model achieved a Recall of 88.39%, Precision of 88.39%, and F1 score of 88.39%.
On the WHU-CD dataset, the MambaBCD model achieved a Recall of 94.19%, Precision of 94.19%, and F1 score of 94.19%.
On the SECOND dataset, the MambaSCD model achieved a Semantic Kappa (SeK) score of 24.04%.
On the xBD dataset, the MambaBDA model achieved an overall F1 score of 81.41%.