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Optimal global pose estimation for consistent sensor data registration

Feng Lu, Evangelos Milios

发表年份
2002
引用次数
27

摘要

We consider the problem of consistent range data registration in modeling an unknown environment. The problem is expressed as the optimal estimation of pose variables under the maximum likelihood criterion. By treating all the history of robot poses as variables and solving them simultaneously, consistency is enforced. We formulate relative pose constraints from both matched scans and odometry measurements to construct a network of measurements. Then we derive closed-form pose estimates as well as their covariance matrices. Examples of global scan registration using both real and simulated data are presented.

关键词

PoseArtificial intelligenceOdometryConsistency (knowledge bases)Computer scienceCovarianceRange (aeronautics)Computer visionConstruct (python library)Mathematical optimization

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