会议专题

Autonomous Learning of Vision-based Layered Object Models on Mobile Robots

Although mobile robots are increasingly being used in real-world applications, the ability to robustly sense and interact with the environment is still missing. A key requirement for the widespread deployment of mobile robots is the ability to operate autonomously by learning desired environmental models and revising the learned models in response to environmental changes. This paper presents an approach that enables a mobile robot to autonomously learn layered models for environmental objects using temporal, local and global visual cues. A temporal assessment of image gradient features is used to detect candidate objects, which are then modeled using color distribution statistics and a spatial representation of gradient features. The robot incrementally revises the learned models and uses them for object recognition and tracking based on a matching scheme comprising a spatial similarity measure and second order distribution statistics. All algorithms are implemented and tested on a wheeled robot platform in dynamic indoor environments.

Visual learning Recognition Wheeled robots

Xiang Li Mohan Sridharan Shiqi Zhang

Department of Computer Science Texas Tech University,TX 79409

国际会议

2011 IEEE International Conference on Robotics and Automation(2011年IEEE世界机器人与自动化大会 ICRA 2011)

上海

英文

6239-6244

2011-05-09(万方平台首次上网日期,不代表论文的发表时间)