Gated Recurrent Unit
Gated Recurrent Units (GRUs) are a type of recurrent neural network designed to efficiently process sequential data by selectively updating their internal state, addressing limitations of earlier RNN architectures like vanishing gradients. Current research focuses on optimizing GRUs for specific applications, including integrating them with convolutional neural networks (CNNs) for image and video analysis, and employing them in various time-series forecasting tasks such as crime prediction, environmental monitoring, and speech enhancement. The resulting models demonstrate strong performance across diverse domains, highlighting GRUs' value in applications requiring the processing of temporal dependencies in data.
Papers
Smartphone-based Eye Tracking System using Edge Intelligence and Model Optimisation
Nishan Gunawardena, Gough Yumu Lui, Jeewani Anupama Ginige, Bahman Javadi
Dynamic Gated Recurrent Neural Network for Compute-efficient Speech Enhancement
Longbiao Cheng, Ashutosh Pandey, Buye Xu, Tobi Delbruck, Shih-Chii Liu