A Scalable Tree-Based Approach for Joint Object and Pose Recognition
Lai, Kevin (University of Washington) | Bo, Liefeng (University of Washington) | Ren, Xiaofeng (Intel Labs) | Fox, Dieter (University of Washington)
Recognizing possibly thousands of objects is a crucial capability for an autonomous agent to understand and interact with everyday environments. Practical object recognition comes in multiple forms: Is this a coffee mug (category recognition). Is this Alice's coffee mug? (instance recognition). Is the mug with the handle facing left or right? (pose recognition). We present a scalable framework, Object-Pose Tree, which efficiently organizes data into a semantically structured tree. The tree structure enables both scalable training and testing, allowing us to solve recognition over thousands of object poses in near real-time. Moreover, by simultaneously optimizing all three tasks, our approach outperforms standard nearest neighbor and 1-vs-all classifications, with large improvements on pose recognition. We evaluate the proposed technique on a dataset of 300 household objects collected using a Kinect-style 3D camera. Experiments demonstrate that our system achieves robust and efficient object category, instance, and pose recognition on challenging everyday objects.
Aug-4-2011
- Country:
- North America > United States > Washington > King County > Seattle (0.14)
- Genre:
- Research Report (0.46)
- Technology: