FTA-Net: Frequency-Temporal-Aware Network for Remote Sensing Change Detection
Taojun Zhu, Zikai Zhao, Min Xia, Junqing Huang, Liguo Weng, Kai Hu, Haifeng Lin, Wenyu Zhao
Abstract
Change detection (CD) aims to explore surface changes in co-aligned image pairs. However, many existing networks primarily focus on learning deep features, without considering the impact of attention and fusion strategies on detection performance. Therefore, a new Frequency-Temporal-Aware Network (FTA-Net) is proposed, it recognizes changes by means of a frequency-domain temporal fusion module and supervised attention to multilevel time-difference features, while reducing the model size. Frequency Temporal Fusion Module is designed to introduce the frequency attention mechanism into the fusion process. First, it has a two-branch Transformer-INN feature extractor using a Lite-Transformer that utilizes remote attention for low-frequency global features, and a Invertible Neural Network that focuses on extracting high-frequency local information. The semantic information and details of the object in both highfrequency and low-frequency feature maps are further strengthened by fusing the high-frequency local features and low-frequency global representations. Then, a Stepwise Modification Detection Module is proposed to better extract temporal difference information from bitemporal features. In addition, a Supervised Learning Module is constructed to re-weight features to efficiently aggregate multi-level features from highlevel to low-level. FTA-Net outperforms state-of-theart methods on three challenging CD datasets, and it have fewer parameters (4.93 M) and lower computational cost (6.71 G). Our code is available at https://github.com/Ztjdsb/FTA-Net