Temporal Convolutional Network
Temporal Convolutional Networks (TCNs) are a class of deep learning models designed for processing sequential data, particularly time series, by leveraging the power of convolutional operations across time. Current research focuses on enhancing TCNs through integration with other architectures like Transformers and attention mechanisms to improve performance in various applications, including time series forecasting, action recognition, and anomaly detection. This work is significant because TCNs offer a powerful and efficient approach to analyzing temporal data, leading to advancements in diverse fields ranging from environmental monitoring (e.g., wind speed forecasting) to healthcare (e.g., emotion recognition from physiological signals).
Papers
Pruning In Time (PIT): A Lightweight Network Architecture Optimizer for Temporal Convolutional Networks
Matteo Risso, Alessio Burrello, Daniele Jahier Pagliari, Francesco Conti, Lorenzo Lamberti, Enrico Macii, Luca Benini, Massimo Poncino
Robust and Energy-efficient PPG-based Heart-Rate Monitoring
Matteo Risso, Alessio Burrello, Daniele Jahier Pagliari, Simone Benatti, Enrico Macii, Luca Benini, Massimo Poncino
Temporal Context Matters: Enhancing Single Image Prediction with Disease Progression Representations
Aishik Konwer, Xuan Xu, Joseph Bae, Chao Chen, Prateek Prasanna
Parallel Spatio-Temporal Attention-Based TCN for Multivariate Time Series Prediction
Fan Jin, Ke Zhang, Yipan Huang, Yifei Zhu, Baiping Chen