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Trevor Darrell

Researcher at University of California, Berkeley

Publications -  734
Citations -  222973

Trevor Darrell is an academic researcher from University of California, Berkeley. The author has contributed to research in topics: Computer science & Object detection. The author has an hindex of 148, co-authored 678 publications receiving 181113 citations. Previous affiliations of Trevor Darrell include Massachusetts Institute of Technology & Boston University.

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Grounding spatial relations for human-robot interaction

TL;DR: A system for human-robot interaction that learns both models for spatial prepositions and for object recognition, and grounds the meaning of an input sentence in terms of visual percepts coming from the robot's sensors to send an appropriate command to the PR2 or respond to spatial queries.
Proceedings ArticleDOI

Active face tracking and pose estimation in an interactive room

TL;DR: This work determines the spatial location of a user's head and guides an active camera to obtain foveated images of the face to demonstrate real-time face tracking and pose estimation in an unconstrained office environment with an active foveate camera.
Posted Content

A New Meta-Baseline for Few-Shot Learning

TL;DR: This work presents a Meta-Baseline method, by pre-training a classifier on all base classes and meta-learning on a nearest-centroid based few-shot classification algorithm, which outperforms recent state-of-the-art methods by a large margin.
Proceedings ArticleDOI

Contextual recognition of head gestures

TL;DR: A discriminative approach to contextual prediction and multi-modal integration was able to improve the performance of head gesture detection even when the topic of the test set was significantly different than the training set.
Posted Content

Do Convnets Learn Correspondence

TL;DR: Evidence is presented that convnet features localize at a much finer scale than their receptive field sizes, that they can be used to perform intraclass aligment as well as conventional hand-engineered features, and that they outperform conventional features in keypoint prediction on objects from PASCAL VOC 2011.