학술논문

Toward Seamless Localization: Situational Awareness Using UWB Wearable Systems and Convolutional Neural Networks
Document Type
Periodical
Source
IEEE Journal of Indoor and Seamless Positioning and Navigation J. Ind. Sea. Pos. Nav. Indoor and Seamless Positioning and Navigation, IEEE Journal of. 1:12-25 2023
Subject
Aerospace
Transportation
Robotics and Control Systems
Communication, Networking and Broadcast Technologies
General Topics for Engineers
Components, Circuits, Devices and Systems
Signal Processing and Analysis
Location awareness
Navigation
Global navigation satellite system
Sensors
Urban areas
Receivers
Neural networks
Channel impulse response
Detection algorithms
Signal processing
Ultra wideband technology
Satellite navigation systems
Distance measurement
Channel estimation
Channel impulse response (CIR)
environment detection
neural networks
seamless localization
signal processing
ultrawideband (UWB)
Language
ISSN
2832-7322
Abstract
Depending on the environment, an increasing number of localization methods are available ranging from satellite-based localization to visual navigation, each with its own advantages and disadvantages. Fast and reliable identification of the environment characteristics is crucial for selecting the best available localization method. This research introduces a deep-learning-based method utilizing data collected with wearable ultra-wideband devices. A novel approach mimicking radar behavior is presented to collect the relevant data. Channel state information is proposed for training of the neural network and enabling the environment detection to obtain the desired situational awareness. The proposed detection approach is evaluated in three types of environments: 1) indoor, 2) open outdoor, and 3) crowded urban. The results show that fast and accurate environment detection for seamless localization purposes can be achieved with a precision of 91% for general scenarios and a precision of 96% for specific use cases.

Online Access