Paper
5 January 1989 Probabilistic Estimation Mechanisms And Tesselated Representations For Sensor Fusion
Larry Matthies, Alberto Elfes
Author Affiliations +
Proceedings Volume 1003, Sensor Fusion: Spatial Reasoning and Scene Interpretation; (1989) https://doi.org/10.1117/12.948906
Event: 1988 Cambridge Symposium on Advances in Intelligent Robotics Systems, 1988, Boston, MA, United States
Abstract
Two fundamental issues in sensor fusion are (1) the definition of model spaces for representing objects of interest and (2) the definition of estimation procedures for instantiating repre-sentations, with descriptions of uncertainty, from noisy observa-tions. In 3-D perception, model spaces frequently are defined by contour and surface descriptions, such as line segments and planar patches. These models impose strong geometric limitations on the class of scenes that can be modelled and involve segmentation decisions that make model updating difficult. In this paper, we show that random field models provide attractive, alternative representations for the problem of creating spatial descriptions from stereo and sonar range measurements. For stereo ranging, we model the depth at every pixel in the image as a random variable. Maximum likelihood or Bayesian formulations of the matching problem allow us to express the uncertainty in depth at each pixel that results from matching in noisy images. For sonar ranging, we describe a tesselated spatial representation that encodes spatial occupancy probability at each cell. We derive a probabilistic scheme for updating estimates of spatial occupancy from a model of uncertainty in sonar range measurements. These representations can be used in conjunction to build occupancy maps from both sonar and stereo range measurements. We show preliminary results from sonar and single-scanline stereo that illustrate the potential of this ap-proach. We conclude with a discussion of the advantages of the representations and estimation procedures used in this paper over approaches based on contour and surface models.
© (1989) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Larry Matthies and Alberto Elfes "Probabilistic Estimation Mechanisms And Tesselated Representations For Sensor Fusion", Proc. SPIE 1003, Sensor Fusion: Spatial Reasoning and Scene Interpretation, (5 January 1989); https://doi.org/10.1117/12.948906
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Cited by 13 scholarly publications.
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KEYWORDS
Sensors

Error analysis

Sensor fusion

Image fusion

Statistical analysis

Mobile robots

Image segmentation

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