Amanote Research
Register
Sign In
Unsupervised Feature Extraction Inspired by Latent Low-Rank Representation
doi 10.1109/wacv.2015.78
Full Text
Open PDF
Abstract
Available in
full text
Date
January 1, 2015
Authors
Yaming Wang
Vlad I. Morariu
Larry S. Davis
Publisher
IEEE
Related search
Subspace Structural Constraint-Based Discriminative Feature Learning via Nonnegative Low Rank Representation
PLoS ONE
Multidisciplinary
Low-Rank Representation Based Action Recognition
Unsupervised Learning of Deep Feature Representation for Clustering Egocentric Actions
Low-Dimensional Sensory Feature Representation by Trigeminal Primary Afferents
Journal of Neuroscience
Neuroscience
Reduced Rank Vector Generalized Linear Models for Feature Extraction
Statistics and its Interface
Applied Mathematics
Statistics
Probability
Mel-Cepstral Feature Extraction Methods for Image Representation
Optical Engineering
Engineering
Optics
Atomic
Molecular Physics,
Feature Extraction Based on Bio-Inspired Model for Robust Emotion Recognition
Soft Computing
Geometry
Software
Theoretical Computer Science
Topology
A Latent Feature Analysis of the Neural Representation of Conceptual Knowledge
Lecture Notes in Computer Science
Computer Science
Theoretical Computer Science
Low-Rank Representation With Graph Constraints for Robust Visual Tracking
IEICE Transactions on Information and Systems
Electronic Engineering
Pattern Recognition
Hardware
Computer Vision
Electrical
Architecture
Artificial Intelligence
Software