Image Decomposition
Image decomposition involves separating an image into constituent components, such as illumination, texture, and objects, to facilitate analysis, manipulation, or enhancement. Current research focuses on developing efficient and effective decomposition methods using various deep learning architectures, including transformers, convolutional neural networks, and diffusion models, often within a "decompose-and-fuse" paradigm. These advancements are improving image restoration, enhancement (e.g., low-light image enhancement), and analysis tasks across diverse applications, including medical imaging, security, and computer graphics. The ability to decompose images into meaningful components is proving crucial for solving complex problems in various fields.
Papers
Joint Super-Resolution and Inverse Tone-Mapping: A Feature Decomposition Aggregation Network and A New Benchmark
Gang Xu, Yu-chen Yang, Liang Wang, Xian-Tong Zhen, Jun Xu
BMD-GAN: Bone mineral density estimation using x-ray image decomposition into projections of bone-segmented quantitative computed tomography using hierarchical learning
Yi Gu, Yoshito Otake, Keisuke Uemura, Mazen Soufi, Masaki Takao, Nobuhiko Sugano, Yoshinobu Sato