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Robust Navigation and Tracking in Dynamic Environments
Oh Songhwai

Citation
Oh Songhwai. "Robust Navigation and Tracking in Dynamic Environments". Talk or presentation, 8, September, 2015.

Abstract
With the recent development in robotics, we can expect that more service robots will be assisting us in the near future in places, such as offices, malls, and homes. But, for a robot to coexist with humans and operate successfully in crowded and dynamic environments, a robot must be able to act safely and harmoniously with human participants in the environment. In this talk, I will describe our recent work on robust navigation using Gaussian process regression and robust target tracking using chance-constrained optimization. An autoregressive Gaussian process (AR-GP) motion model is developed to predict the future trajectories of pedestrians using measurements from the partially observable egocentric view of a robot. A robot is controlled in real-time based on predicted pedestrian trajectories using the proposed AR-GP motion controller. In order to make the AR-GP motion model robust against outliers and noises, a structured low-rank matrix approximation method using nuclear-norm regularized l1-norm minimization is developed to approximate kernel matrices. A leveraged non-stationary kernel function is proposed to incorporate both positive and negative training samples, in order to speed up the learning process. Using the AR-GP motion model, we have developed a robust target tracking algorithm based on chance-constrained optimization for a mobile sensor with bounded fan-shaped sensing regions, such that the tracking success probability is guaranteed and the travel distance is minimized. I will also describe experimental results from the proposed algorithms. This talk is based on joint work with Sungjoon Choi, Eunwoo Kim, and Yoonseon Oh.

Electronic downloads

Citation formats  
  • HTML
    Oh Songhwai. <a
    href="http://chess.eecs.berkeley.edu/pubs/1110.html"
    ><i>Robust Navigation and Tracking in Dynamic
    Environments</i></a>, Talk or presentation,  8,
    September, 2015.
  • Plain text
    Oh Songhwai. "Robust Navigation and Tracking in Dynamic
    Environments". Talk or presentation,  8, September,
    2015.
  • BibTeX
    @presentation{Songhwai15_RobustNavigationTrackingInDynamicEnvironments,
        author = {Oh Songhwai},
        title = {Robust Navigation and Tracking in Dynamic
                  Environments},
        day = {8},
        month = {September},
        year = {2015},
        abstract = {With the recent development in robotics, we can
                  expect that more service robots will be assisting
                  us in the near future in places, such as offices,
                  malls, and homes. But, for a robot to coexist with
                  humans and operate successfully in crowded and
                  dynamic environments, a robot must be able to act
                  safely and harmoniously with human participants in
                  the environment. In this talk, I will describe our
                  recent work on robust navigation using Gaussian
                  process regression and robust target tracking
                  using chance-constrained optimization. An
                  autoregressive Gaussian process (AR-GP) motion
                  model is developed to predict the future
                  trajectories of pedestrians using measurements
                  from the partially observable egocentric view of a
                  robot. A robot is controlled in real-time based on
                  predicted pedestrian trajectories using the
                  proposed AR-GP motion controller. In order to make
                  the AR-GP motion model robust against outliers and
                  noises, a structured low-rank matrix approximation
                  method using nuclear-norm regularized l1-norm
                  minimization is developed to approximate kernel
                  matrices. A leveraged non-stationary kernel
                  function is proposed to incorporate both positive
                  and negative training samples, in order to speed
                  up the learning process. Using the AR-GP motion
                  model, we have developed a robust target tracking
                  algorithm based on chance-constrained optimization
                  for a mobile sensor with bounded fan-shaped
                  sensing regions, such that the tracking success
                  probability is guaranteed and the travel distance
                  is minimized. I will also describe experimental
                  results from the proposed algorithms. This talk is
                  based on joint work with Sungjoon Choi, Eunwoo
                  Kim, and Yoonseon Oh.},
        URL = {http://chess.eecs.berkeley.edu/pubs/1110.html}
    }
    

Posted by Sadigh Dorsa on 9 Sep 2015.
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