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
Transforming medical imaging with Transformers? A comparative review of key properties, current progresses, and future perspectives
Jun Li, Junyu Chen, Yucheng Tang, Ce Wang, Bennett A. Landman, S. Kevin Zhou
Modeling Image Composition for Complex Scene Generation
Zuopeng Yang, Daqing Liu, Chaoyue Wang, Jie Yang, Dacheng Tao
MISSU: 3D Medical Image Segmentation via Self-distilling TransUNet
Nan Wang, Shaohui Lin, Xiaoxiao Li, Ke Li, Yunhang Shen, Yue Gao, Lizhuang Ma
BayesFormer: Transformer with Uncertainty Estimation
Karthik Abinav Sankararaman, Sinong Wang, Han Fang
Dynamic Linear Transformer for 3D Biomedical Image Segmentation
Zheyuan Zhang, Ulas Bagci
Unifying Voxel-based Representation with Transformer for 3D Object Detection
Yanwei Li, Yilun Chen, Xiaojuan Qi, Zeming Li, Jian Sun, Jiaya Jia
Transformer with Fourier Integral Attentions
Tan Nguyen, Minh Pham, Tam Nguyen, Khai Nguyen, Stanley J. Osher, Nhat Ho
Learning Sequential Contexts using Transformer for 3D Hand Pose Estimation
Leyla Khaleghi, Joshua Marshall, Ali Etemad
Can Transformer be Too Compositional? Analysing Idiom Processing in Neural Machine Translation
Verna Dankers, Christopher G. Lucas, Ivan Titov
Robotic grasp detection based on Transformer
Mingshuai Dong, Xiuli Yu
Transformer with Tree-order Encoding for Neural Program Generation
Klaudia-Doris Thellmann, Bernhard Stadler, Ricardo Usbeck, Jens Lehmann