학술논문

Covert Perceptual Capability Development
Document Type
Conference Paper
Source
Huang, Xiao and Weng, Juyang (2005) Covert Perceptual Capability Development. [Conference Paper]
Subject
Computer Science: Statistical Models
Computer Science: Machine Learning
Computer Science: Robotics
Statistical Models
Machine Learning
Robotics
Language
Abstract
In this paper, we propose a model to develop robots’ covert perceptual capability using reinforcement learning. Covert perceptual behavior is treated as action selected by a motivational system. We apply this model to vision-based navigation. The goal is to enable a robot to learn road boundary type. Instead of dealing with problems in controlled environments with a low-dimensional state space, we test the model on images captured in non-stationary environments. Incremental Hierarchical Discriminant Regression is used to generate states on the fly. Its coarse-to-fine tree structure guarantees real-time retrieval in high-dimensional state space. K Nearest-Neighbor strategy is adopted to further reduce training time complexity.