TY - GEN
T1 - Where am I? An NDT-based prior for MCL
AU - Kucner, Tomasz Piotr
AU - Magnusson, Martin
AU - Lilienthal, Achim J.
N1 - Publisher Copyright:
© 2015 IEEE.
PY - 2015/11/10
Y1 - 2015/11/10
N2 - One of the key requirements of autonomous mobile robots is a robust and accurate localisation system. Recent advances in the development of Monte Carlo Localisation (MCL) algorithms, especially the Normal Distribution Transform Monte Carlo Localisation (NDT-MCL), provides memory-efficient reliable localisation with industry-grade precision. We propose an approach for building an informed prior for NDT-MCL (in fact for any MCL algorithm) using an initial observation of the environment and its map. Leveraging on the NDT map representation, we build a set of poses using partial observations. After that we construct a Gaussian Mixture Model (GMM) over it. Next we obtain scores for each distribution in GMM. In this way we obtain in an efficient way a prior for NDT-MCL. Our approach provides a more focused then uniform initial distribution, concentrated in states where the robot is more likely to be, by building a Gaussian mixture model over potential poses. We present evaluations and quantitative results using real-world data from an indoor environment. Our experiments show that, compared to a uniform prior, the proposed method significantly increases the number of successful initialisations of NDT-MCL and reduces the time until convergence, at a negligible initial cost for computing the prior.
AB - One of the key requirements of autonomous mobile robots is a robust and accurate localisation system. Recent advances in the development of Monte Carlo Localisation (MCL) algorithms, especially the Normal Distribution Transform Monte Carlo Localisation (NDT-MCL), provides memory-efficient reliable localisation with industry-grade precision. We propose an approach for building an informed prior for NDT-MCL (in fact for any MCL algorithm) using an initial observation of the environment and its map. Leveraging on the NDT map representation, we build a set of poses using partial observations. After that we construct a Gaussian Mixture Model (GMM) over it. Next we obtain scores for each distribution in GMM. In this way we obtain in an efficient way a prior for NDT-MCL. Our approach provides a more focused then uniform initial distribution, concentrated in states where the robot is more likely to be, by building a Gaussian mixture model over potential poses. We present evaluations and quantitative results using real-world data from an indoor environment. Our experiments show that, compared to a uniform prior, the proposed method significantly increases the number of successful initialisations of NDT-MCL and reduces the time until convergence, at a negligible initial cost for computing the prior.
KW - Accuracy
KW - Gaussian distribution
KW - Gaussian mixture model
KW - Robot kinematics
KW - Robot sensing systems
UR - http://www.scopus.com/inward/record.url?scp=84962243582&partnerID=8YFLogxK
U2 - 10.1109/ECMR.2015.7324175
DO - 10.1109/ECMR.2015.7324175
M3 - Conference contribution
AN - SCOPUS:84962243582
T3 - 2015 European Conference on Mobile Robots, ECMR 2015 - Proceedings
BT - 2015 European Conference on Mobile Robots, ECMR 2015 - Proceedings
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - European Conference on Mobile Robots, ECMR 2015
Y2 - 2 September 2015 through 4 September 2015
ER -