Human-robot interaction requires a common understanding of the operational
environment, which can be provided by a representation that blends geometric
and symbolic knowledge: a semantic map. Through a semantic map the robot can
interpret user commands by grounding them to its sensory observations. Semantic
mapping is the process that builds such a representation. Despite being
fundamental to enable cognition and high-level reasoning in robotics, semantic
mapping is a challenging task due to generalization to different scenarios and
sensory data types. In fact, it is difficult to obtain a rich and accurate
semantic map of the environment and of the objects therein. Moreover, to date,
there are no frameworks that allow for a comparison of the performance in
building semantic maps for a given environment. To tackle these issues we
design RoSmEEry, a novel framework based on the Gazebo simulator, where we
introduce an accessible and ready-to-use methodology for a systematic
evaluation of semantic mapping algorithms. We release our framework, as an
open-source package, with multiple simulation environments with the aim to
provide a general set-up to quantitatively measure the performances in
acquiring semantic knowledge about the environment.
Dettaglio pubblicazione
2021, ARMS2021, Pages -
RoSmEEry: Robotic Simulated Environment for Evaluation and Benchmarking of Semantic Mapping Algorithms (04b Atto di convegno in volume)
Kaszuba Sara, Sabbella Sandeep Reddy, Suriani Vincenzo, Riccio Francesco, Nardi Daniele
Gruppo di ricerca: Artificial Intelligence and Robotics
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