Object Discovery with a Mobile Robot
dc.contributor.advisor | Parr, Ronald | |
dc.contributor.author | Mason, Julian | |
dc.date.accessioned | 2013-11-14T19:14:52Z | |
dc.date.available | 2013-11-14T19:14:52Z | |
dc.date.issued | 2013 | |
dc.department | Computer Science | |
dc.description.abstract | The world is full of objects: cups, phones, computers, books, and countless other things. For many tasks, robots need to understand that this object is a stapler, that object is a textbook, and this other object is a gallon of milk. The classic approach to this problem is object recognition, which classifies each observation into one of several previously-defined classes. While modern object recognition algorithms perform well, they require extensive supervised training: in a standard benchmark, the training data average more than four hundred images of each object class. The cost of manually labeling the training data prohibits these techniques from scaling to general environments. Homes and workplaces can contain hundreds of unique objects, and the objects in one environment may not appear in another. We propose a different approach: object discovery. Rather than rely on manual labeling, we describe unsupervised algorithms that leverage the unique capabilities of a mobile robot to discover the objects (and classes of objects) in an environment. Because our algorithms are unsupervised, they scale gracefully to large, general environments over long periods of time. To validate our results, we collected 67 robotic runs through a large office environment. This dataset, which we have made available to the community, is the largest of its kind. At each step, we treat the problem as one of robotics, not disembodied computer vision. The scale and quality of our results demonstrate the merit of this perspective, and prove the practicality of long-term large-scale object discovery. | |
dc.identifier.uri | ||
dc.subject | Computer science | |
dc.title | Object Discovery with a Mobile Robot | |
dc.type | Dissertation |
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