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Nonlinear dimensionality reduction
Known as:
Non-linear dimensionality reduction
, Locally linear embeddings
, Locally linear embedding
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High-dimensional data, meaning data that requires more than two or three dimensions to represent, can be difficult to interpret. One approach to…
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Related topics
Related topics
42 relations
Autoencoder
Backpropagation
Curse of dimensionality
Degree matrix
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Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2013
2013
CERTH @ MediaEval 2013 Social Event Detection Task
S. Papadopoulos
,
Christos Zigkolis
,
Y. Kompatsiaris
,
A. Vakali
MediaEval Benchmarking Initiative for Multimedia…
2013
Corpus ID: 2004064
This paper describes the participation of CERTH in the “Social Event Detection Task @ MediaEval 2011”, which aims at discovering…
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2009
2009
Outlier exploration and diagnostic classification of a multi-centre 1H-MRS brain tumour database
A. Vellido
,
E. Romero
,
F. F. González-Navarro
,
L. B. Muñoz
,
M. Julià-Sapé
,
C. Arús
Neurocomputing
2009
Corpus ID: 207101145
2008
2008
Person-Independent Head Pose Estimation Using Biased Manifold Embedding
V. Balasubramanian
,
S. Krishna
,
S. Panchanathan
EURASIP Journal on Advances in Signal Processing
2008
Corpus ID: 10776350
Head pose estimation has been an integral problem in the study of face recognition systems and human-computer interfaces, as part…
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2007
2007
A new nonlinear dimensionality reduction method with application to hyperspectral image analysis
S. Qian
,
Guangyi Chen
IEEE International Geoscience and Remote Sensing…
2007
Corpus ID: 1880511
In this paper, we propose a new nonlinear dimensionality reduction method by combining Locally Linear Embedding (LLE) with…
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2007
2007
Diffusion Maps and Geometric Harmonics for Automatic Target Recognition (ATR). Volume 2. Appendices
S. Zucker
,
R. Coifman
2007
Corpus ID: 33721827
Abstract : Geometric harmonics provides a framework for taking data in high-dimensional measurement spaces and embedding them in…
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2007
2007
Anomaly Detection in Transportation Corridors using Manifold Embedding
Amrudin Agovic
,
A. Banerjee
,
A. Ganguly
,
V. Protopopescu
2007
Corpus ID: 11374767
The formation of secure transportation corridors, where cargoes and shipments from points of entry can be dispatched safely to…
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Highly Cited
2006
Highly Cited
2006
Modeling Correspondences for Multi-Camera Tracking Using Nonlinear Manifold Learning and Target Dynamics
Vlad I. Morariu
,
O. Camps
Computer Vision and Pattern Recognition
2006
Corpus ID: 4664124
Multi-camera tracking systems often must maintain consistent identity labels of the targets across views to recover 3D…
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2006
2006
Incremental Construction of Neighborhood Graphs for Nonlinear Dimensionality Reduction
Dongfang Zhao
,
Li Yang
International Conference on Pattern Recognition
2006
Corpus ID: 14940460
Most nonlinear data embedding methods use bottom-up approaches for capturing underlying structures of data distributed as points…
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Highly Cited
2005
Highly Cited
2005
Computer Vision for Biomedical Image Applications, First International Workshop, CVBIA 2005, Beijing, China, October 21, 2005, Proceedings
Yanxi Liu
,
Tianzi Jiang
,
Changshui Zhang
Computer Vision for Biomedical Image Applications
2005
Corpus ID: 12216067
Highly Cited
2002
Highly Cited
2002
Efficient Simplicial Reconstructions of Manifolds from Their Samples
D. Freedman
IEEE Transactions on Pattern Analysis and Machine…
2002
Corpus ID: 9421114
An algorithm for manifold learning is presented. Given only samples of a finite-dimensional differentiable manifold and no a…
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