Some Room for GLVQ: Semantic Labeling of Occupancy Grid Maps uri icon

Open Access

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Peer Reviewed

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Abstract

  • This paper aims at an approach for labeling places within a grid cell environment. For that we propose a method that is based on non-negative matrix factorization (NMF) to extract environment specific features from a given occupancy grid map. NMF also computes a description about where on the map these features need to be applied. We use this description after certain pre-processing steps as an input for generalized learning vector quantization (GLVQ) to achieve the classification or labeling of the grid cells. Our approach is evaluated on a standard data set from University of Freiburg, showing very promising results.

Veröffentlichungszeitpunkt

  • Januar 1, 2014