Deep Cellular Recurrent Network for Efficient Analysis of Time-Series Data with Spatial Information

Autor: Christopher Tennant, Alexander Glandon, Lasitha Vidyaratne, Mahbubul Alam, Khan M. Iftekharuddin, Anna Shabalina
Jazyk: angličtina
Rok vydání: 2021
Předmět:
Signal Processing (eess.SP)
FOS: Computer and information sciences
Clustering high-dimensional data
Computer Science - Machine Learning
Computer Networks and Communications
Computer science
Computer Vision and Pattern Recognition (cs.CV)
Feature extraction
Computer Science - Computer Vision and Pattern Recognition
Fault detection and isolation
Machine Learning (cs.LG)
Machine Learning
Seizures
Artificial Intelligence
FOS: Electrical engineering
electronic engineering
information engineering

Humans
Electrical Engineering and Systems Science - Signal Processing
Spatial analysis
Signal processing
business.industry
Signal Processing
Computer-Assisted

Electroencephalography
Pattern recognition
Computer Science Applications
Data set
Recurrent neural network
Neural Networks
Computer

Artificial intelligence
business
Feature learning
Software
Popis: Efficient processing of large-scale time-series data is an intricate problem in machine learning. Conventional sensor signal processing pipelines with hand-engineered feature extraction often involve huge computational costs with high dimensional data. Deep recurrent neural networks have shown promise in automated feature learning for improved time-series processing. However, generic deep recurrent models grow in scale and depth with the increased complexity of the data. This is particularly challenging in presence of high dimensional data with temporal and spatial characteristics. Consequently, this work proposes a novel deep cellular recurrent neural network (DCRNN) architecture to efficiently process complex multidimensional time-series data with spatial information. The cellular recurrent architecture in the proposed model allows for location-aware synchronous processing of time-series data from spatially distributed sensor signal sources. Extensive trainable parameter sharing due to cellularity in the proposed architecture ensures efficiency in the use of recurrent processing units with high-dimensional inputs. This study also investigates the versatility of the proposed DCRNN model for the classification of multiclass time-series data from different application domains. Consequently, the proposed DCRNN architecture is evaluated using two time-series data sets: a multichannel scalp electroencephalogram (EEG) data set for seizure detection, and a machine fault detection data set obtained in-house. The results suggest that the proposed architecture achieves state-of-the-art performance while utilizing substantially less trainable parameters when compared to comparable methods in the literature.
Databáze: OpenAIRE