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
IAFI-FCOS: Intra- and across-layer feature interaction FCOS model for lesion detection of CT images
Qiu Guan, Mengjie Pan, Feng Chen, Zhiqiang Yang, Zhongwen Yu, Qianwei Zhou, Haigen Hu
Attention-Guided Multi-scale Interaction Network for Face Super-Resolution
Xujie Wan, Wenjie Li, Guangwei Gao, Huimin Lu, Jian Yang, Chia-Wen Lin
BreakNet: Discontinuity-Resilient Multi-Scale Transformer Segmentation of Retinal Layers
Razieh Ganjee, Bingjie Wang, Lingyun Wang, Chengcheng Zhao, José-Alain Sahel, Shaohua Pi
EMDFNet: Efficient Multi-scale and Diverse Feature Network for Traffic Sign Detection
Pengyu Li, Chenhe Liu, Tengfei Li, Xinyu Wang, Shihui Zhang, Dongyang Yu
Self-Parameterization Based Multi-Resolution Mesh Convolution Networks
Shi Hezi, Jiang Luo, Zheng Jianmin, Zeng Jun
MSVM-UNet: Multi-Scale Vision Mamba UNet for Medical Image Segmentation
Chaowei Chen, Li Yu, Shiquan Min, Shunfang Wang
Riemann-based Multi-scale Attention Reasoning Network for Text-3D Retrieval
Wenrui Li, Wei Han, Yandu Chen, Yeyu Chai, Yidan Lu, Xingtao Wang, Xiaopeng Fan
MsMemoryGAN: A Multi-scale Memory GAN for Palm-vein Adversarial Purification
Huafeng Qin, Yuming Fu, Huiyan Zhang, Mounim A. El-Yacoubi, Xinbo Gao, Qun Song, Jun Wang
MUSE: Mamba is Efficient Multi-scale Learner for Text-video Retrieval
Haoran Tang, Meng Cao, Jinfa Huang, Ruyang Liu, Peng Jin, Ge Li, Xiaodan Liang