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Raghuraman Gopalan

Researcher at AT&T

Publications -  65
Citations -  3263

Raghuraman Gopalan is an academic researcher from AT&T. The author has contributed to research in topics: Cluster analysis & Service (business). The author has an hindex of 15, co-authored 65 publications receiving 2925 citations. Previous affiliations of Raghuraman Gopalan include University of Maryland, College Park & Honda.

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Proceedings ArticleDOI

Domain adaptation for object recognition: An unsupervised approach

TL;DR: This paper presents one of the first studies on unsupervised domain adaptation in the context of object recognition, where data has been labeled only from the source domain (and therefore do not have correspondences between object categories across domains).
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Visual Domain Adaptation: A survey of recent advances

TL;DR: A survey of domain adaptation methods for visual recognition discusses the merits and drawbacks of existing domain adaptation approaches and identifies promising avenues for research in this rapidly evolving field.

DLID: Deep Learning for Domain Adaptation by Interpolating between Domains

TL;DR: A novel deep learning model for domain adaptation is proposed which attempts to learn a predictively useful representation of the data by taking into account information from the distribution shift between the training and test data.
Journal ArticleDOI

Unsupervised Adaptation Across Domain Shifts by Generating Intermediate Data Representations.

TL;DR: This paper primarily focuses on the unsupervised scenario where the labeled source domain training data is accompanied by unlabeled target domain test data, and presents a two-stage data-driven approach by generating intermediate data representations that could provide relevant information on the domain shift.
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A Learning Approach Towards Detection and Tracking of Lane Markings

TL;DR: A pixel-hierarchy feature descriptor is proposed to model the contextual information shared by lane markings with the surrounding road region and a robust boosting algorithm to select relevant contextual features for detecting lane markings is proposed.