2022
DOI: 10.1007/978-3-031-08443-0_4
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Loss Function Regularization on the Iterated Racing Procedure for Automatic Tuning of RatSLAM Parameters

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“…In the accuracy and performance contexts (item (i)), xRatSLAM has already been used by researchers in experiments that require shorter execution times to perform time-consuming tasks, such as parameter tuning in long-term mapping [ 30 , 31 ]. However, opportunities for enhancements are highlighted below to show how the framework can be improved: Other RatSLAM module implementations; A built-in assessment module for mapping accuracy evaluation; Dynamic libraries (plug-ins) in the module inclusion mechanism; Support for 3D SLAM, as required for unmanned aerial vehicles (UAV: drones) or uncrewed underwater vehicles (UUV); A ROS wrapper for xRatSLAM; An interface for other programming languages such as Python; A module repository for sharing implementations between different users; Usability improvements to suit neuroscience theorists and practitioners.…”
Section: Conclusion and Future Workmentioning
confidence: 99%
“…In the accuracy and performance contexts (item (i)), xRatSLAM has already been used by researchers in experiments that require shorter execution times to perform time-consuming tasks, such as parameter tuning in long-term mapping [ 30 , 31 ]. However, opportunities for enhancements are highlighted below to show how the framework can be improved: Other RatSLAM module implementations; A built-in assessment module for mapping accuracy evaluation; Dynamic libraries (plug-ins) in the module inclusion mechanism; Support for 3D SLAM, as required for unmanned aerial vehicles (UAV: drones) or uncrewed underwater vehicles (UUV); A ROS wrapper for xRatSLAM; An interface for other programming languages such as Python; A module repository for sharing implementations between different users; Usability improvements to suit neuroscience theorists and practitioners.…”
Section: Conclusion and Future Workmentioning
confidence: 99%