Separation Performance
Separation performance, the ability to isolate individual components from complex mixtures, is a crucial objective across diverse scientific fields. Current research focuses on improving separation in areas like audio source separation (using models like Mamba-2 and transformer networks), image segmentation (leveraging convolutional neural networks and implicit neural fields), and data decomposition (employing techniques such as shifted proper orthogonal decomposition and neural networks). These advancements have significant implications for applications ranging from augmented reality and seismic data analysis to music production and medical imaging, enabling more accurate analysis and improved user experiences.
Papers
Separate Anything You Describe
Xubo Liu, Qiuqiang Kong, Yan Zhao, Haohe Liu, Yi Yuan, Yuzhuo Liu, Rui Xia, Yuxuan Wang, Mark D. Plumbley, Wenwu Wang
Improving Autonomous Separation Assurance through Distributed Reinforcement Learning with Attention Networks
Marc W. Brittain, Luis E. Alvarez, Kara Breeden