TY - JOUR
T1 - MTSCD-Net
T2 - A network based on multi-task learning for semantic change detection of bitemporal remote sensing images
AU - Cui, Fengzhi
AU - Jiang, Jie
N1 - Publisher Copyright:
© 2023 The Author(s)
PY - 2023/4
Y1 - 2023/4
N2 - In recent years, change detection has been one of the hot research topics within the field of remote sensing. Previous studies have concentrated on binary change detection (BCD), but it doesn't meet the current needs. Therefore, semantic change detection (SCD) is also gradually developing, which focuses on determining the specific changed type while obtaining changed areas. In the paper, we propose a multi-task learning method (MTSCD-Net) for SCD task. The SCD task is decoupled into two related subtasks, semantic segmentation (SS) and BCD, then unifies them under the same framework. Multi-scale features are extracted using the Siamese semantic-aware encoder based on Swin Transformer, and the aggregation module is designed to combine features. Then, the change information extraction module is designed to enhance the capacity to express features by fully integrating the two-level difference features that are generated from fused features. Moreover, in the decoder stage, the spatial attention weight map is obtained using the features of the BCD subtask, which provides location prior information for the features of the SS subtask. It helps fully explore the correlation between the two subtasks. The two loss functions of subtasks are weighted to train MTSCD-Net. The comparative experiments results on two typical SCD datasets confirm the advantage of MTSCD-Net for SCD task. For the SeK index, MTSCD-Net achieves 3.96% and 20.57% on HRSCD and SECOND datasets, respectively. This outperforms other comparative methods such as Bi-SRNet (which achieves 4.86% and 1.47% higher on two datasets, respectively). The same is true for the Score metric. Moreover, the ablation experiment results confirm the effectiveness of key modules.
AB - In recent years, change detection has been one of the hot research topics within the field of remote sensing. Previous studies have concentrated on binary change detection (BCD), but it doesn't meet the current needs. Therefore, semantic change detection (SCD) is also gradually developing, which focuses on determining the specific changed type while obtaining changed areas. In the paper, we propose a multi-task learning method (MTSCD-Net) for SCD task. The SCD task is decoupled into two related subtasks, semantic segmentation (SS) and BCD, then unifies them under the same framework. Multi-scale features are extracted using the Siamese semantic-aware encoder based on Swin Transformer, and the aggregation module is designed to combine features. Then, the change information extraction module is designed to enhance the capacity to express features by fully integrating the two-level difference features that are generated from fused features. Moreover, in the decoder stage, the spatial attention weight map is obtained using the features of the BCD subtask, which provides location prior information for the features of the SS subtask. It helps fully explore the correlation between the two subtasks. The two loss functions of subtasks are weighted to train MTSCD-Net. The comparative experiments results on two typical SCD datasets confirm the advantage of MTSCD-Net for SCD task. For the SeK index, MTSCD-Net achieves 3.96% and 20.57% on HRSCD and SECOND datasets, respectively. This outperforms other comparative methods such as Bi-SRNet (which achieves 4.86% and 1.47% higher on two datasets, respectively). The same is true for the Score metric. Moreover, the ablation experiment results confirm the effectiveness of key modules.
KW - Deep learning
KW - Multi-task learning
KW - Remote sensing
KW - Semantic change detection
KW - Siamese network
UR - https://www.scopus.com/pages/publications/85151829106
U2 - 10.1016/j.jag.2023.103294
DO - 10.1016/j.jag.2023.103294
M3 - 文章
AN - SCOPUS:85151829106
SN - 1569-8432
VL - 118
JO - International Journal of Applied Earth Observation and Geoinformation
JF - International Journal of Applied Earth Observation and Geoinformation
M1 - 103294
ER -