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- Title
ADF‐Net: Attention‐guided deep feature decomposition network for infrared and visible image fusion.
- Authors
Shen, Sen; Zhang, Taotao; Dong, Haidi; Yuan, ShengZhi; Li, Min; Xiao, RenKai; Zhang, Xiaohui
- Abstract
To effectively enhance the ability to acquire information by making full use of the complementary features of infrared and visible images, the widely used image fusion algorithm is faced with challenges such as information loss and image blurring. In response to this issue, the authors propose a dual‐branch deep hierarchical fusion network (ADF‐Net) guided by an attention mechanism. Initially, the attention convolution module extracts the shallow features of the image. Subsequently, a dual‐branch deep decomposition feature extractor is introduced, where in the transformer encoder block (TEB) employs remote attention to process low‐frequency global features, while the CNN encoder block (CEB) extracts high‐frequency local information. Ultimately, the global fusion layer based on TEB and the local fusion layer based on CEB produce the fused image through the encoder. Multiple experiments demonstrate that ADF‐Net excels in various aspects by utilizing two‐stage training and an appropriate loss function for training and testing.
- Subjects
IMAGE fusion; COMPUTER vision; INFRARED imaging; TRANSFORMER models; ALGORITHMS
- Publication
IET Image Processing (Wiley-Blackwell), 2024, Vol 18, Issue 10, p2774
- ISSN
1751-9659
- Publication type
Article
- DOI
10.1049/ipr2.13134