Deep Learning Based Speed Estimation for Constraining Strapdown Inertial Navigation on Smartphones

08/10/2018
by   Santiago Cortes, et al.
0

Strapdown inertial navigation systems are sensitive to the quality of the data provided by the accelerometer and gyroscope. Low-grade IMUs in handheld smart-devices pose a problem for inertial odometry on these devices. We propose a scheme for constraining the inertial odometry problem by complementing non-linear state estimation by a CNN-based deep-learning model for inferring the momentary speed based on a window of IMU samples. We show the feasibility of the model using a wide range of data from an iPhone, and present proof-of-concept results for how the model can be combined with an inertial navigation system for three-dimensional inertial navigation.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/13/2020

Deep Learning based Pedestrian Inertial Navigation: Methods, Dataset and On-Device Inference

Modern inertial measurements units (IMUs) are small, cheap, energy effic...
research
03/01/2017

Inertial Odometry on Handheld Smartphones

Building a complete inertial navigation system using the limited quality...
research
05/20/2022

Deep Learning-based Inertial Odometry for Pedestrian Tracking using Attention Mechanism and Res2Net Module

Pedestrian dead reckoning is a challenging task due to the low-cost iner...
research
09/29/2021

PilotEar: Enabling In-ear Inertial Navigation

Navigation systems are used daily. While different types of navigation s...
research
06/02/2019

Iterative Path Reconstruction for Large-Scale Inertial Navigation on Smartphones

Modern smartphones have all the sensing capabilities required for accura...
research
01/30/2018

IONet: Learning to Cure the Curse of Drift in Inertial Odometry

Inertial sensors play a pivotal role in indoor localization, which in tu...
research
11/23/2021

RIO: Rotation-equivariance supervised learning of robust inertial odometry

This paper introduces rotation-equivariance as a self-supervisor to trai...

Please sign up or login with your details

Forgot password? Click here to reset