New Frontiers in Imitation Learning
- Yisong Yue | California Institute of Technology
The ongoing explosion of spatiotemporal tracking data has now made it possible to analyze and model fine-grained behaviors in a wide range of domains. For instance, tracking data is now being collected for every NBA basketball game with players, referees, and the ball tracked at 25 Hz, along with annotated game events such as passes, shots, and fouls. Other settings include laboratory animals, people in public spaces, professionals in settings such as operating rooms, actors speaking and performing, digital avatars in virtual environments, and even the behavior of other computational systems. In this talk, I will describe ongoing research in using imitation learning to develop predictive models of fine-grained behavior. Imitation learning is branch of machine learning that deals with learning to imitate dynamic demonstrated behavior. I will provide a high level overview of the basic problem setting, as well as specific projects in modeling laboratory animals, professional sports, speech animation, and expensive computational oracles.
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Jennifer Listgarten
Senior Researcher
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接下来观看
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VoluMe: Authentic 3D Video Calls from Live Gaussian Splat Prediction
- Antonio Criminisi,
- Charlie Hewitt,
- Marek Kowalski (HE/HIM)
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Emancipatory Information Retrieval (Invited Talk at UCC)
- Bhaskar Mitra
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Accelerating Multilingual RAG Systems
- Nandan Thakur
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Microsoft Research India - who we are.
- Kalika Bali,
- Sriram Rajamani,
- Venkat Padmanabhan
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