Crynodeb
Most existing change detection (CD) methods target homogeneous images. However, in real-world scenarios like disaster management, where CD is urgent and pre-changed and post-changed images are typical of different modalities, significant challenges arise for multimodal change detection (MCD). One challenge is that bi-temporal image pairs, sourced from distinct sensors, may cause an image domain gap. Another issue surfaces when multimodal bi-temporal image pairs require collaborative input from domain experts who are specialised among different image fields for pixel-level annotation, resulting in scarce annotated samples. To address these challenges, this paper proposes a novel self-supervised difference contrast learning framework (Self-DCF). This framework facilitates networks training without labelled samples by automatically exploiting the feature information inherent in bi-temporal imagery to supervise each other mutually. Additionally, a Unified Mapping Unit reduces the domain gap between different modal images. The efficiency and robustness of Self-DCF are validated on five popular datasets, outperforming state-of-the-art algorithms.
Iaith wreiddiol | Saesneg |
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Rhif yr erthygl | 111148 |
Nifer y tudalennau | 15 |
Cyfnodolyn | Pattern Recognition |
Cyfrol | 159 |
Dyddiad ar-lein cynnar | 12 Tach 2024 |
Dynodwyr Gwrthrych Digidol (DOIs) | |
Statws | Cyhoeddwyd - 31 Maw 2025 |
Ôl bys
Gweld gwybodaeth am bynciau ymchwil 'Self-supervised multimodal change detection based on difference contrast learning for remote sensing imagery'. Gyda’i gilydd, maen nhw’n ffurfio ôl bys unigryw.Y Wasg / Y Cyfryngau
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New Technology Findings from Northwestern Polytechnic University Described (Self-supervised Multimodal Change Detection Based On Difference Contrast Learning for Remote Sensing Imagery)
05 Maw 2025
1 eitem o Sylw ar y cyfryngau
Y Wasg / Cyfryngau: Sylw yn y cyfryngau