Localization from Semantic Observations via the Matrix Permanent
Nikolay A. Atanasov, Menglong Zhu, Kostas Daniilidis, George Pappas

Citation
Nikolay A. Atanasov, Menglong Zhu, Kostas Daniilidis, George Pappas. "Localization from Semantic Observations via the Matrix Permanent". The International Journal of Robotics Research, 2015.

Abstract
Most approaches to robot localization rely on low-level geometric features such as points, lines, and planes. In this paper, we use object recognition to obtain semantic information from the robot's sensors and consider the task of localizing the robot within a prior map of landmarks, which are annotated with semantic labels. As object recognition algorithms miss detections and produce false alarms, correct data association between the detections and the landmarks on the map is central to the semantic localization problem. Instead of the traditional vector-based representation, we propose a sensor model, which encodes the semantic observations via random finite sets and enables a unified treatment of missed detections, false alarms, and data association. Our second contribution is to reduce the problem of computing the likelihood of a set-valued observation to the problem of computing a matrix permanent. It is this crucial transformation that allows us to solve the semantic localization problem with a polynomial-time approximation to the set-based Bayes filter. The performance of our approach is demonstrated in simulation and in a real environment using a deformable-part-model-based object detector. Robust global localization from semantic observations is demonstrated for a mobile robot and for the Project Tango phone. Comparisons are made with the traditional lidar-based geometric Monte-Carlo localization.

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Citation formats  
  • HTML
    Nikolay A. Atanasov, Menglong Zhu, Kostas Daniilidis, George
    Pappas. <a
    href="http://www.terraswarm.org/pubs/458.html"
    >Localization from Semantic Observations via the Matrix
    Permanent</a>, <i>The International Journal of
    Robotics Research</i>,  2015.
  • Plain text
    Nikolay A. Atanasov, Menglong Zhu, Kostas Daniilidis, George
    Pappas. "Localization from Semantic Observations via
    the Matrix Permanent". <i>The International
    Journal of Robotics Research</i>,  2015.
  • BibTeX
    @article{AtanasovZhuDaniilidisPappas15_LocalizationFromSemanticObservationsViaMatrixPermanent,
        author = {Nikolay A. Atanasov and Menglong Zhu and Kostas
                  Daniilidis and George Pappas},
        title = {Localization from Semantic Observations via the
                  Matrix Permanent},
        journal = {The International Journal of Robotics Research},
        year = {2015},
        abstract = {Most approaches to robot localization rely on
                  low-level geometric features such as points,
                  lines, and planes. In this paper, we use object
                  recognition to obtain semantic information from
                  the robot's sensors and consider the task of
                  localizing the robot within a prior map of
                  landmarks, which are annotated with semantic
                  labels. As object recognition algorithms miss
                  detections and produce false alarms, correct data
                  association between the detections and the
                  landmarks on the map is central to the semantic
                  localization problem. Instead of the traditional
                  vector-based representation, we propose a sensor
                  model, which encodes the semantic observations via
                  random finite sets and enables a unified treatment
                  of missed detections, false alarms, and data
                  association. Our second contribution is to reduce
                  the problem of computing the likelihood of a
                  set-valued observation to the problem of computing
                  a matrix permanent. It is this crucial
                  transformation that allows us to solve the
                  semantic localization problem with a
                  polynomial-time approximation to the set-based
                  Bayes filter. The performance of our approach is
                  demonstrated in simulation and in a real
                  environment using a deformable-part-model-based
                  object detector. Robust global localization from
                  semantic observations is demonstrated for a mobile
                  robot and for the Project Tango phone. Comparisons
                  are made with the traditional lidar-based
                  geometric Monte-Carlo localization.},
        URL = {http://terraswarm.org/pubs/458.html}
    }
    

Posted by Nikolay A. Atanasov on 11 Nov 2014.
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