Transformer Based
Transformer-based models are revolutionizing various fields by leveraging self-attention mechanisms to capture long-range dependencies in sequential data, achieving state-of-the-art results in tasks ranging from natural language processing and image recognition to time series forecasting and robotic control. Current research focuses on improving efficiency (e.g., through quantization and optimized architectures), enhancing generalization capabilities, and addressing challenges like handling long sequences and endogeneity. These advancements are significantly impacting diverse scientific communities and practical applications, leading to more accurate, efficient, and robust models across numerous domains.
Papers
Intelligent Anomaly Detection for Lane Rendering Using Transformer with Self-Supervised Pre-Training and Customized Fine-Tuning
Yongqi Dong, Xingmin Lu, Ruohan Li, Wei Song, Bart van Arem, Haneen Farah
EulerMormer: Robust Eulerian Motion Magnification via Dynamic Filtering within Transformer
Fei Wang, Dan Guo, Kun Li, Meng Wang
SRTransGAN: Image Super-Resolution using Transformer based Generative Adversarial Network
Neeraj Baghel, Shiv Ram Dubey, Satish Kumar Singh
MobileUtr: Revisiting the relationship between light-weight CNN and Transformer for efficient medical image segmentation
Fenghe Tang, Bingkun Nian, Jianrui Ding, Quan Quan, Jie Yang, Wei Liu, S. Kevin Zhou
EdgeConvFormer: Dynamic Graph CNN and Transformer based Anomaly Detection in Multivariate Time Series
Jie Liu, Qilin Li, Senjian An, Bradley Ezard, Ling Li
Compression of end-to-end non-autoregressive image-to-speech system for low-resourced devices
Gokul Srinivasagan, Michael Deisher, Munir Georges
Classifying patient voice in social media data using neural networks: A comparison of AI models on different data sources and therapeutic domains
Giorgos Lysandrou, Roma English Owen, Vanja Popovic, Grant Le Brun, Beatrice Alex, Elizabeth A. L. Fairley
MultiResFormer: Transformer with Adaptive Multi-Resolution Modeling for General Time Series Forecasting
Linfeng Du, Ji Xin, Alex Labach, Saba Zuberi, Maksims Volkovs, Rahul G. Krishnan