Title :
Adaptive 3-D object classification with reinforcement learning
Author :
Jens Garstka;Gabriele Peters
Author_Institution :
Human-Computer Interaction, Faculty of Mathematics and Computer Science, University of Hagen, D-58084, Germany
fDate :
7/1/2015 12:00:00 AM
Abstract :
We propose an adaptive approach to 3-D object classification. In this approach appropriate 3-D feature descriptor algorithms for 3-D point clouds are selected via reinforcement learning depending on properties of the objects to be classified. This approach is supposed to be able to learn strategies for an advantageous selection of 3-D point cloud descriptor algorithms in an autonomous and adaptive way, and thus is supposed to yield higher object classification rates in unfamiliar environments than any of the single algorithms alone. In addition, we expect our approach to be able to adapt to subsequently added 3-D feature descriptor algorithms as well as to autonomously learn new object categories when encountered in the environment without further user assistance. We describe the 3-D object classification pipeline based on local 3-D features and its integration into the reinforcement learning environment.
Keywords :
"Learning (artificial intelligence)","Three-dimensional displays","Pipelines","Histograms","Shape","Context","Object recognition"
Conference_Titel :
Informatics in Control, Automation and Robotics (ICINCO), 2015 12th International Conference on