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K. Murphy. Bayesian map learning in dynamic environments. In Neural Info. Proc. Systems (NIPS), 1999.

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Locating Moving Entities in Indoor Environments with.. - Rosencrantz, Gordon.. (2003)   (1 citation)  (Correct)

....not actually hold: for example, it would be violated if we knew that opponents tended to move in groups. In practice, though, assuming independence in opponent motion is safe in that it establishes a worst case motion model. Independence also holds for measurements, as discussed at length in [19]. In particular, there are two types of information we can get from our sensors, positive and negative. Positive information tells us where an opponent actor is; we receive positive information by associating a sensor reading i to a role j. Negative information tells us where an opponent is not; ....

K. Murphy. Bayesian map learning in dynamic environments. Proc. NIPS-99.


FastSLAM 2.0: An Improved Particle Filtering Algorithm for.. - Montemerlo, Thrun (2003)   (Correct)

....as an efficient approach to SLAM based on particle filtering [6] does not fall into either of the categories above. FastSLAM takes advantage of an important characteristic of the SLAM problem (with known data association) landmark estimates are conditionally independent given the robot s path [17] . FastSLAM uses a particle filter to sample over robot paths. Each particle possesses N low dimensional EKFs, one for each of the N landmarks. This representation requires O(NM) memory, where M is the number of particles in the particle filter. Updating this filter requires O(M log N) time, with ....

....noise: p(z t j s t ; n t ) g(s t ; n t ) t (2) p(s t j u t ; s t 1) h(u t ; s t 1) t (3) Here g and h are nonlinear functions, and t and t are Gaussian noise variables with covariance R t and P t , respectively. 3 FastSLAM FastSLAM [15] is based on the important observation [17] that the posterior can be factored ) p(s Y n p( n j s ) 4) This factorization is exact and universal in SLAM problems. It states that if one (hypothetically) knew the path of the vehicle, the landmark positions could be estimated independently of each other (hence ....

K. Murphy. Bayesian map learning in dynamic environments. Proc. NIPS, 1999.


An Efficient FastSLAM Algorithm for Generating Maps - Of Large-Scale Cyclic   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Neural Info. Proc. Systems (NIPS), 1999.


Using the Topological Skeleton for Scalable Global.. - Modayil, Beeson, Kuipers (2004)   (Correct)

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K. Murphy, "Bayesian map learning in dynamic environments," in Neural Information Processing Systems (NIPS-99), 1999.


On Actively Closing Loops in Grid-based FastSLAM - Cyrill Stachniss Dirk   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Neural Info. Proc. Systems (NIPS), Denver, CO, USA, 1999.


TOURBOT and WebFAIR: Web-operated Mobile Robots.. - Trahanias.. (2005)   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Neural Info. Proc. Systems (NIPS), 1999.


Recovering Particle Diversity in a Rao-Blackwellized.. - Stachniss, Grisetti.. (2005)   (1 citation)  (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Neural Info. Proc. Systems (NIPS), 1999.


Improving Grid-based SLAM with Rao-Blackwellized.. - Grisetti, Stachniss.. (2005)   (2 citations)  (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Neural Info. Proc. Systems (NIPS), 1999.


Improved Rao-Blackwellized Mapping by Adaptive.. - Stachniss..   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Neural Info. Proc. Systems (NIPS), 1999.


A Modified Particle Filter for Simultaneous Robot.. - Hu, Downs, Wyeth..   (Correct)

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Murphy. "Bayesian map learning in dynamic environments." NIPS 1999


FastSLAM: An Efficient Solution to the.. - Thrun.. (2004)   (2 citations)  (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Advances in Neural Information Processing Systems (NIPS). MIT Press, 1999.


Exploration with Active Loop-Closing for FastSLAM - Stachniss, Hähnel, Burgard (2004)   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Neural Info. Proc. Systems (NIPS), 1999.


Multi-Robot SLAM With Sparse Extended - Information Filers Sebastian   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Advances in Neural Information Processing Systems (NIPS). MIT Press, 1999. S. Thrun and Y. Liu


Simultaneous Mapping and Localization With Sparse - Extended Information Filters   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. Proc. NIPS-99.


Locating Moving Entities in Indoor Environments with - Teams Of Mobile   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. Proc. NIPS-99.


An Evaluation of the Sequential Monte Carlo Technique for.. - Yuen, MacDonald (2003)   (Correct)

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K.P. Murphy. Bayesian map learning in dynamic environments. In Advances in Neural Information Processing System, volume 12, pages 1015--1021. MIT Press, 2000.


A Comparison between Extended Kalman Filtering and Sequential .. - Yuen, MacDonald   (Correct)

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K.P. Murphy. Bayesian map learning in dynamic environments. In Advances in Neural Information Processing System, volume 12, pages 1015--1021. MIT Press, 2000.


DP-SLAM: Fast, Robust Simultaneous Localization and Mapping.. - Eliazar, Parr (2003)   (5 citations)  (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Advances in Neural Information Processing Systems 11. MIT Press, 1999.


Dp-Slam 2.0 - Austin Eliazar And (2004)   (1 citation)  (Correct)

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K. Murphy, "Bayesian map learning in dynamic environments," in Advances in Neural Information Processing Systems 11. MIT Press, 1999.


Line-based SMC SLAM Method in Environment with Polygonal.. - Yuen, MacDonald (2003)   (Correct)

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K.P. Murphy. Bayesian map learning in dynamic environments. In Advances in Neural Information Processing System, volume 12, pages 1015--1021. MIT Press, 2000.


An Efficient FastSLAM Algorithm for Generating Maps - Of Large-Scale Cyclic   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Neural Info. Proc. Systems (NIPS), 1999.


FastSLAM: A Factored Solution to the Simultaneous Localization.. - Montemerlo (2003)   (44 citations)  (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Advances in Neural Information Processing Systems (NIPS). MIT Press, 1999.


An Autonomous Robotic System for Mapping Abandoned Mines - Ferguson, Morris.. (2003)   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. NIPS-99.


Exploration with Active Loop-Closing for FastSLAM - Stachniss, Hähnel, Burgard (2004)   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. In Neural Info. Proc. Systems (NIPS), 1999.


An Autonomous Robotic System for Mapping Abandoned Mines - Ferguson, Morris.. (2003)   (Correct)

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K. Murphy. Bayesian map learning in dynamic environments. NIPS-99.

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