SLAM with SC-PHD Filters: An Underwater Vehicle Application
Chee Sing Lee, Sharad Nagappa, Narcís Palomeras, Daniel E. Clark, Joaquím Salví
- Year
- 2014
- Citations
- 17
Abstract
The random finite-set formulation for multiobject estimation provides a means of estimating the number of objects in cluttered environments with missed detections within a unified probabilistic framework. This methodology is now becoming the dominant mathematical framework within the sensor fusion community for developing multiple-target tracking algorithms. These techniques are also gaining traction in the field of feature-based simultaneous localization and mapping (SLAM) for mobile robotics. Here, we present one such instance of this approach with an underwater vehicle using a hierarchical multiobject estimation method for estimating both landmarks and vehicle position.
Keywords
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