Litcius/Paper detail

A Novel Robust Gaussian Approximate Smoother Based on EM for Cooperative Localization With Sensor Fault and Outliers

Bo Xu, Yu Guo, Lianzhao Wang, Jiao Zhang

2020IEEE Transactions on Instrumentation and Measurement30 citationsDOI

Abstract

In this article, a novel robust Gaussian approximation smoother based on expectation-maximization (EM) algorithm is proposed for cooperative localization (CL) with faulty Doppler velocity log (DVL) and heavy-tailed measurement noise. In our model, the autonomous underwater vehicle (AUV) velocity information that is not available due to DVL failure and the bias in the underwater acoustic modem are considered as unknown inputs. Then, the Student's t distribution is used to model the heavy-tailed measurement noise. An EM algorithm is also developed for the state-space model with heavy-tailed measurement noise. The state, noise covariance matrices, and auxiliary random variables are regarded as hidden variables to obtain the maximum likelihood estimation of unknown inputs. Gaussian smoother where modified process and measurement noise covariance are inferred by variational Bayesian (VB) approach is applied to estimate the state. The experimental results illustrate that given the heavy-tailed noise, the proposed method estimates the unknown input, and the state with a high level of accuracy. The proposed algorithm can be used as a backup algorithm for CL in cases where DVL is not available due to failure.

Topics & Concepts

CovarianceNoise (video)AlgorithmNoise measurementOutlierExpectation–maximization algorithmGaussian noiseCovariance functionGaussian processGaussianFault (geology)Computer scienceMathematicsArtificial intelligenceStatisticsNoise reductionMaximum likelihoodPhysicsQuantum mechanicsGeologySeismologyImage (mathematics)Target Tracking and Data Fusion in Sensor NetworksUnderwater Vehicles and Communication SystemsIndoor and Outdoor Localization Technologies