Multi Scale
Multi-scale analysis focuses on processing and interpreting data across different scales of resolution, aiming to capture both fine details and broader contextual information. Current research emphasizes the development of novel architectures, such as transformers and state-space models (like Mamba), often incorporating multi-scale convolutional layers, attention mechanisms, and hierarchical structures to improve feature extraction and representation learning. This approach is proving valuable in diverse fields, enhancing performance in tasks ranging from medical image segmentation and time series forecasting to object detection and image super-resolution, ultimately leading to more accurate and robust results in various applications.
Papers
Poseidon: Efficient Foundation Models for PDEs
Maximilian Herde, Bogdan Raonić, Tobias Rohner, Roger Käppeli, Roberto Molinaro, Emmanuel de Bézenac, Siddhartha Mishra
Physics-Aware Neural Implicit Solvers for multiscale, parametric PDEs with applications in heterogeneous media
Matthaios Chatzopoulos, Phaedon-Stelios Koutsourelakis
PatchScaler: An Efficient Patch-Independent Diffusion Model for Super-Resolution
Yong Liu, Hang Dong, Jinshan Pan, Qingji Dong, Kai Chen, Rongxiang Zhang, Lean Fu, Fei Wang
The Multi-Range Theory of Translation Quality Measurement: MQM scoring models and Statistical Quality Control
Arle Lommel, Serge Gladkoff, Alan Melby, Sue Ellen Wright, Ingemar Strandvik, Katerina Gasova, Angelika Vaasa, Andy Benzo, Romina Marazzato Sparano, Monica Foresi, Johani Innis, Lifeng Han, Goran Nenadic
TimeMixer: Decomposable Multiscale Mixing for Time Series Forecasting
Shiyu Wang, Haixu Wu, Xiaoming Shi, Tengge Hu, Huakun Luo, Lintao Ma, James Y. Zhang, Jun Zhou
Graphcode: Learning from multiparameter persistent homology using graph neural networks
Michael Kerber, Florian Russold
Exploration of Multi-Scale Image Fusion Systems in Intelligent Medical Image Analysis
Yuxiang Hu, Haowei Yang, Ting Xu, Shuyao He, Jiajie Yuan, Haozhang Deng