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Antonio Torralba

Researcher at Massachusetts Institute of Technology

Publications -  437
Citations -  105763

Antonio Torralba is an academic researcher from Massachusetts Institute of Technology. The author has contributed to research in topics: Computer science & Object detection. The author has an hindex of 119, co-authored 388 publications receiving 84607 citations. Previous affiliations of Antonio Torralba include Vassar College & Nvidia.

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Journal ArticleDOI

Nonparametric Scene Parsing via Label Transfer

TL;DR: This paper proposes a novel, nonparametric approach for object recognition and scene parsing using a new technology the authors name label transfer, which is easy to implement, has few parameters, and embeds contextual information naturally in the retrieval/alignment procedure.
Proceedings Article

Using the Forest to See the Trees: A Graphical Model Relating Features, Objects, and Scenes

TL;DR: This work presents a conditional random field for jointly solving the tasks of object detection and scene classification, and proposes to use the scene context as an extra source of (global) information, to help resolve local ambiguities.
Posted Content

Semantic Understanding of Scenes through the ADE20K Dataset

TL;DR: This work presents a densely annotated dataset ADE20K, which spans diverse annotations of scenes, objects, parts of objects, and in some cases even parts of parts, and shows that the networks trained on this dataset are able to segment a wide variety of scenes and objects.
Proceedings ArticleDOI

Nonparametric scene parsing: Label transfer via dense scene alignment

TL;DR: Compared to existing object recognition approaches that require training for each object category, the proposed nonparametric scene parsing system is easy to implement, has few parameters, and embeds contextual information naturally in the retrieval/alignment procedure.
Proceedings ArticleDOI

Learning to share visual appearance for multiclass object detection

TL;DR: A hierarchical classification model that allows rare objects to borrow statistical strength from related objects that have many training examples and learns both a hierarchy for sharing visual appearance across 200 object categories and hierarchical parameters is presented.