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Ning Zhang

Researcher at University of California, Berkeley

Publications -  94
Citations -  14844

Ning Zhang 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 24, co-authored 50 publications receiving 13037 citations. Previous affiliations of Ning Zhang include Facebook & Tsinghua University.

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Proceedings Article

DeCAF: A Deep Convolutional Activation Feature for Generic Visual Recognition

TL;DR: DeCAF as discussed by the authors is an open-source implementation of these deep convolutional activation features, along with all associated network parameters, to enable vision researchers to conduct experimentation with deep representations across a range of visual concept learning paradigms.
Posted Content

DeCAF: A Deep Convolutional Activation Feature for Generic Visual Recognition

TL;DR: DeCAF, an open-source implementation of deep convolutional activation features, along with all associated network parameters, are released to enable vision researchers to be able to conduct experimentation with deep representations across a range of visual concept learning paradigms.
Proceedings Article

Deep Domain Confusion: Maximizing for Domain Invariance

TL;DR: This work proposes a new CNN architecture which introduces an adaptation layer and an additional domain confusion loss, to learn a representation that is both semantically meaningful and domain invariant and shows that a domain confusion metric can be used for model selection to determine the dimension of an adaptationlayer and the best position for the layer in the CNN architecture.
Book ChapterDOI

Part-Based R-CNNs for Fine-Grained Category Detection

TL;DR: In this article, the authors propose a model for fine-grained categorization by leveraging deep convolutional features computed on bottom-up region proposals, which learns whole-object and part detectors, enforces learned geometric constraints between them, and predicts a finegrained category from a pose normalized representation.
Proceedings ArticleDOI

Compact Bilinear Pooling

TL;DR: The authors proposed two compact bilinear representations with the same discriminative power as the full Bilinear representation but with only a few thousand dimensions, which allow back-propagation of classification errors enabling an end-to-end optimization of the visual recognition system.