A survey of methods for mobile robot localization and mapping in dynamic indoor environments

The emergence of indoor applications of mobile robotics has led to the development of various algorithms for effective localization and mapping in the presence of moving obstacles. A mobile robot needs to simultaneously solve many problems like sensing, mapping, localization, path planning, obstacle detection and avoidance for a completely autonomous system. This paper surveys the different methods developed to handle dynamic changes in an indoor environment.

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