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
FontDiffuser: One-Shot Font Generation via Denoising Diffusion with Multi-Scale Content Aggregation and Style Contrastive Learning
Zhenhua Yang, Dezhi Peng, Yuxin Kong, Yuyi Zhang, Cong Yao, Lianwen Jin
Rotated Multi-Scale Interaction Network for Referring Remote Sensing Image Segmentation
Sihan Liu, Yiwei Ma, Xiaoqing Zhang, Haowei Wang, Jiayi Ji, Xiaoshuai Sun, Rongrong Ji
PointNeRF++: A multi-scale, point-based Neural Radiance Field
Weiwei Sun, Eduard Trulls, Yang-Che Tseng, Sneha Sambandam, Gopal Sharma, Andrea Tagliasacchi, Kwang Moo Yi
Generative Powers of Ten
Xiaojuan Wang, Janne Kontkanen, Brian Curless, Steve Seitz, Ira Kemelmacher, Ben Mildenhall, Pratul Srinivasan, Dor Verbin, Aleksander Holynski
Dynamic Erasing Network Based on Multi-Scale Temporal Features for Weakly Supervised Video Anomaly Detection
Chen Zhang, Guorong Li, Yuankai Qi, Hanhua Ye, Laiyun Qing, Ming-Hsuan Yang, Qingming Huang
Time Scale Network: A Shallow Neural Network For Time Series Data
Trevor Meyer, Camden Shultz, Najim Dehak, Laureano Moro-Velazquez, Pedro Irazoqui
Hierarchical deep learning-based adaptive time-stepping scheme for multiscale simulations
Asif Hamid, Danish Rafiq, Shahkar Ahmad Nahvi, Mohammad Abid Bazaz