Javascript must be enabled to continue!
Deep Unsupervised Domain Adaptation with Time Series Sensor Data: A Survey
View through CrossRef
Sensors are devices that output signals for sensing physical phenomena and are widely used in all aspects of our social production activities. The continuous recording of physical parameters allows effective analysis of the operational status of the monitored system and prediction of unknown risks. Thanks to the development of deep learning, the ability to analyze temporal signals collected by sensors has been greatly improved. However, models trained in the source domain do not perform well in the target domain due to the presence of domain gaps. In recent years, many researchers have used deep unsupervised domain adaptation techniques to address the domain gap between signals collected by sensors in different scenarios, i.e., using labeled data in the source domain and unlabeled data in the target domain to improve the performance of models in the target domain. This survey first summarizes the background of recent research on unsupervised domain adaptation with time series sensor data, the types of sensors used, the domain gap between the source and target domains, and commonly used datasets. Then, the paper classifies and compares different unsupervised domain adaptation methods according to the way of adaptation and summarizes different adaptation settings based on the number of source and target domains. Finally, this survey discusses the challenges of the current research and provides an outlook on future work. This survey systematically reviews and summarizes recent research on unsupervised domain adaptation for time series sensor data to provide the reader with a systematic understanding of the field.
Title: Deep Unsupervised Domain Adaptation with Time Series Sensor Data: A Survey
Description:
Sensors are devices that output signals for sensing physical phenomena and are widely used in all aspects of our social production activities.
The continuous recording of physical parameters allows effective analysis of the operational status of the monitored system and prediction of unknown risks.
Thanks to the development of deep learning, the ability to analyze temporal signals collected by sensors has been greatly improved.
However, models trained in the source domain do not perform well in the target domain due to the presence of domain gaps.
In recent years, many researchers have used deep unsupervised domain adaptation techniques to address the domain gap between signals collected by sensors in different scenarios, i.
e.
, using labeled data in the source domain and unlabeled data in the target domain to improve the performance of models in the target domain.
This survey first summarizes the background of recent research on unsupervised domain adaptation with time series sensor data, the types of sensors used, the domain gap between the source and target domains, and commonly used datasets.
Then, the paper classifies and compares different unsupervised domain adaptation methods according to the way of adaptation and summarizes different adaptation settings based on the number of source and target domains.
Finally, this survey discusses the challenges of the current research and provides an outlook on future work.
This survey systematically reviews and summarizes recent research on unsupervised domain adaptation for time series sensor data to provide the reader with a systematic understanding of the field.
Related Results
Dynamic stochastic modeling for inertial sensors
Dynamic stochastic modeling for inertial sensors
Es ampliamente conocido que los modelos de error para sensores inerciales tienen dos componentes: El primero es un componente determinista que normalmente es calibrado por el fabri...
Implementation of Faulty Sensor Detection Mechanism using Data Correlation of Multivariate Sensor Readings in Smart Agriculture
Implementation of Faulty Sensor Detection Mechanism using Data Correlation of Multivariate Sensor Readings in Smart Agriculture
Through sensor networks, agriculture can be connected to the IoT, which allows us to create connections among agronomists, farmers, and crops regardless of their geographical diffe...
Técnicas de reconstrucción y compensación activa de frentes de onda complejos
Técnicas de reconstrucción y compensación activa de frentes de onda complejos
The continuous improvements of optical design tools and manufacturing technologies of free-form optical elements, allow the creation of new complex-shaped lenses that improve the p...
Unsupervised Domain Adaptation by Statistics Alignment for Deep Sleep Staging Networks
Unsupervised Domain Adaptation by Statistics Alignment for Deep Sleep Staging Networks
Deep sleep staging networks have reached top performance on large-scale datasets. However, these models perform poorer when training and testing on small sleep cohorts due to data ...
Unsupervised Domain Adaptation by Statistics Alignment for Deep Sleep Staging Networks
Unsupervised Domain Adaptation by Statistics Alignment for Deep Sleep Staging Networks
Deep sleep staging networks have reached top performance on large-scale datasets. However, these models perform poorer when training and testing on small sleep cohorts due to data ...
Unsupervised Domain Adaptation by Statistics Alignment for Deep Sleep Staging Networks
Unsupervised Domain Adaptation by Statistics Alignment for Deep Sleep Staging Networks
Deep sleep staging networks have reached top performance on large-scale datasets. However, these models perform poorer when training and testing on small sleep cohorts due to data ...
Nafion Based Two Electrode CO Sensor
Nafion Based Two Electrode CO Sensor
The aim of this work is to determine the optimal platinum loading for the preparation of membrane-based electrochemical sensors for carbon monoxide detection. Platinum is a require...
Augmenting the sensor network around Helgoland using unsupervised machine learning methods
Augmenting the sensor network around Helgoland using unsupervised machine learning methods
<p>A sensor network surrounds the island of Helgoland, supplying marine data centers with autonomous measurements of variables such as temperature, salinity, chloroph...

