Deep Kalman Filter: Simultaneous Multi-Sensor Integration and Modelling; A GNSS/IMU Case Study
Bayes filters, such as the Kalman and particle filters, have been used in sensor fusion to integrate two sources of information and obtain the best estimate of unknowns. The efficient integration of multiple sensors requires deep knowledge of their error sources. Some sensors, such as Inertial Measu...
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doaj-a224aa2caa6e4ce0b9aeb8f7c7dfb2052020-11-24T22:17:02ZengMDPI AGSensors1424-82202018-04-01185131610.3390/s18051316s18051316Deep Kalman Filter: Simultaneous Multi-Sensor Integration and Modelling; A GNSS/IMU Case StudySiavash Hosseinyalamdary0Department of Earth Observation Science (EOS), Faculty of Geo-information Science and Earth Observation (ITC), University of Twente, Enschede 7514AE, The NetherlandsBayes filters, such as the Kalman and particle filters, have been used in sensor fusion to integrate two sources of information and obtain the best estimate of unknowns. The efficient integration of multiple sensors requires deep knowledge of their error sources. Some sensors, such as Inertial Measurement Unit (IMU), have complicated error sources. Therefore, IMU error modelling and the efficient integration of IMU and Global Navigation Satellite System (GNSS) observations has remained a challenge. In this paper, we developed deep Kalman filter to model and remove IMU errors and, consequently, improve the accuracy of IMU positioning. To achieve this, we added a modelling step to the prediction and update steps of the Kalman filter, so that the IMU error model is learned during integration. The results showed our deep Kalman filter outperformed the conventional Kalman filter and reached a higher level of accuracy.http://www.mdpi.com/1424-8220/18/5/1316deep Kalman filterSimultaneous Sensor Integration and Modelling (SSIM)GNSS/IMU integrationrecurrent neural network (RNN)deep learningLong-Short Term Memory (LSTM) |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Siavash Hosseinyalamdary |
spellingShingle |
Siavash Hosseinyalamdary Deep Kalman Filter: Simultaneous Multi-Sensor Integration and Modelling; A GNSS/IMU Case Study Sensors deep Kalman filter Simultaneous Sensor Integration and Modelling (SSIM) GNSS/IMU integration recurrent neural network (RNN) deep learning Long-Short Term Memory (LSTM) |
author_facet |
Siavash Hosseinyalamdary |
author_sort |
Siavash Hosseinyalamdary |
title |
Deep Kalman Filter: Simultaneous Multi-Sensor Integration and Modelling; A GNSS/IMU Case Study |
title_short |
Deep Kalman Filter: Simultaneous Multi-Sensor Integration and Modelling; A GNSS/IMU Case Study |
title_full |
Deep Kalman Filter: Simultaneous Multi-Sensor Integration and Modelling; A GNSS/IMU Case Study |
title_fullStr |
Deep Kalman Filter: Simultaneous Multi-Sensor Integration and Modelling; A GNSS/IMU Case Study |
title_full_unstemmed |
Deep Kalman Filter: Simultaneous Multi-Sensor Integration and Modelling; A GNSS/IMU Case Study |
title_sort |
deep kalman filter: simultaneous multi-sensor integration and modelling; a gnss/imu case study |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2018-04-01 |
description |
Bayes filters, such as the Kalman and particle filters, have been used in sensor fusion to integrate two sources of information and obtain the best estimate of unknowns. The efficient integration of multiple sensors requires deep knowledge of their error sources. Some sensors, such as Inertial Measurement Unit (IMU), have complicated error sources. Therefore, IMU error modelling and the efficient integration of IMU and Global Navigation Satellite System (GNSS) observations has remained a challenge. In this paper, we developed deep Kalman filter to model and remove IMU errors and, consequently, improve the accuracy of IMU positioning. To achieve this, we added a modelling step to the prediction and update steps of the Kalman filter, so that the IMU error model is learned during integration. The results showed our deep Kalman filter outperformed the conventional Kalman filter and reached a higher level of accuracy. |
topic |
deep Kalman filter Simultaneous Sensor Integration and Modelling (SSIM) GNSS/IMU integration recurrent neural network (RNN) deep learning Long-Short Term Memory (LSTM) |
url |
http://www.mdpi.com/1424-8220/18/5/1316 |
work_keys_str_mv |
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