Learning to be a Depth Camera for Close-Range Human Capture and Interaction
We present a machine learning technique for estimating absolute, per-pixel depth using any conventional monocular 2D camera, with minor hardware modifications. Our approach targets close-range human capture and interaction where dense 3D estimation of hands and faces is desired. We use hybrid classification-regression forests to learn how to map from near infrared intensity images to absolute, metric depth in real-time. We demonstrate a variety of human computer interaction and capture scenarios. Experiments show an accuracy that outperforms a conventional light fall-off baseline, and is comparable to high-quality consumer depth cameras, but with a dramatically reduced cost, power consumption, and form-factor.
- Date:
- Speakers:
- Shahram Izadi
- Affiliation:
- Microsoft Research
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Antonio Criminisi
Principal Researcher
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David Sweeney
Principal Industrial Designer
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Jamie Shotton
Partner Director of Science
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Pushmeet Kohli
Principal Research Manager Director of Research Microsoft Research
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Sing Bing Kang
Principal Researcher
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Sean Fanello
Post Doc Researcher
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Tim Paek
Principal Researcher, Research Manager
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