Homm: Higher-order moment matching for unsupervised domain adaptation
Minimizing the discrepancy of feature distributions between different domains is one of the
most promising directions in unsupervised domain adaptation. From the perspective of …
most promising directions in unsupervised domain adaptation. From the perspective of …
[KNYGA][B] Adaptive blind signal and image processing: learning algorithms and applications
A Cichocki, S Amari - 2002 - books.google.com
With solid theoretical foundations and numerous potential applications, Blind Signal
Processing (BSP) is one of the hottest emerging areas in Signal Processing. This volume …
Processing (BSP) is one of the hottest emerging areas in Signal Processing. This volume …
HOMDA: High-order moment-based domain alignment for unsupervised domain adaptation
Unsupervised domain adaptation aims to annotate unlabeled target domain samples by
utilizing transferable knowledge learned from the source domain. Optimal transport (OT) has …
utilizing transferable knowledge learned from the source domain. Optimal transport (OT) has …
Blind identification and source separation in 2/spl times/3 under-determined mixtures
P Comon - IEEE Transactions on Signal Processing, 2004 - ieeexplore.ieee.org
Under-determined mixtures are characterized by the fact that they have more inputs than
outputs, or, with the antenna array processing terminology, more sources than sensors. The …
outputs, or, with the antenna array processing terminology, more sources than sensors. The …
Bibliography on higher-order statistics
A Swami, GB Giannakis, G Zhou - Signal processing, 1997 - Elsevier
The last fifteen years have witnessed a tremendous resurgence in research and applications
in the area of higher-order statistics (HOS), a broad term encompassing statistical …
in the area of higher-order statistics (HOS), a broad term encompassing statistical …
Robust and high-order correlation alignment for unsupervised domain adaptation
How to measure the domain discrepancy is of significant importance in the field of
unsupervised domain adaptation. Among them, Correlation Alignment (CORAL), aligning …
unsupervised domain adaptation. Among them, Correlation Alignment (CORAL), aligning …
Separation of deterministic signals using independent component analysis (ICA)
E Forootan, J Kusche - Studia Geophysica et Geodaetica, 2013 - Springer
Abstract Independent Component Analysis (ICA) represents a higher-order statistical
technique that is often used to separate mixtures of stochastic random signals into …
technique that is often used to separate mixtures of stochastic random signals into …
Blind source separation
A myriad of applications require the extraction of a set of signals which are not directly
accessible. Instead, this extraction must be carried out from another set of measurements …
accessible. Instead, this extraction must be carried out from another set of measurements …
Neural net approach for blind separation of sources based on geometric properties
CG Puntonet, A Prieto - Neurocomputing, 1998 - Elsevier
This paper presents a new approach to recover original signals (“sources”) from their linear
mixtures, observed by the same number of sensors. The algorithms proposed only assume …
mixtures, observed by the same number of sensors. The algorithms proposed only assume …
Improved contrast dedicated to blind separation in communications
Contrast-based separation of sources have a number of advantages. Among others, they
are optimal (in a precise sense) in the presence of noise of unknown statistics. Here a new …
are optimal (in a precise sense) in the presence of noise of unknown statistics. Here a new …