Mobile Robot Feature-Based SLAM Behavior Learning, and Navigation in Complex Spaces
Ebrahim A. Mattar
- Year
- 2019
- Citations
- 3
- Access
- Open access
Abstract
Learning mobile robot space and navigation behavior, are essential requirements for improved navigation, in addition to gain much understanding about the navigation maps. This chapter presents mobile robots feature-based SLAM behavior learning, and navigation in complex spaces. Mobile intelligence has been based on blending a number of functionaries related to navigation, including learning SLAM map main features. To achieve this, the mobile system was built on diverse levels of intelligence, this includes principle component analysis (PCA), neuro-fuzzy (NF) learning system as a classifier, and fuzzy rule based decision system (FRD).
Keywords
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