Home /Research /CINet: A Learning Based Approach to Incremental Context Modeling in Robots
LEARNING

CINet: A Learning Based Approach to Incremental Context Modeling in Robots

Fethiye Irmak Doğan, İlker Bozcan, Mehmet Çelik, Sinan Kalkan

Year
2017
Access
Open access

Abstract

There have been several attempts at modeling context in robots. However, either these attempts assume a fixed number of contexts or use a rule-based approach to determine when to increment the number of contexts. In this paper, we pose the task of when to increment as a learning problem, which we solve using a Recurrent Neural Network. We show that the network successfully (with 98\% testing accuracy) learns to predict when to increment, and demonstrate, in a scene modeling problem (where the correct number of contexts is not known), that the robot increments the number of contexts in an expected manner (i.e., the entropy of the system is reduced). We also present how the incremental model can be used for various scene reasoning tasks.

Keywords

cs.ROcs.LG

Related papers

Browse all LEARNING papers