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Conference

IEEE Global Conference on Signal and Information Processing 

About: IEEE Global Conference on Signal and Information Processing is an academic conference. The conference publishes majorly in the area(s): MIMO & Compressed sensing. Over the lifetime, 1982 publications have been published by the conference receiving 18842 citations.

Papers published on a yearly basis

Papers
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Proceedings ArticleDOI
01 Dec 2013
TL;DR: This paper demonstrates with some simple examples how Plug-and-Play priors can be used to mix and match a wide variety of existing denoising models with a tomographic forward model, thus greatly expanding the range of possible problem solutions.
Abstract: Model-based reconstruction is a powerful framework for solving a variety of inverse problems in imaging. In recent years, enormous progress has been made in the problem of denoising, a special case of an inverse problem where the forward model is an identity operator. Similarly, great progress has been made in improving model-based inversion when the forward model corresponds to complex physical measurements in applications such as X-ray CT, electron-microscopy, MRI, and ultrasound, to name just a few. However, combining state-of-the-art denoising algorithms (i.e., prior models) with state-of-the-art inversion methods (i.e., forward models) has been a challenge for many reasons. In this paper, we propose a flexible framework that allows state-of-the-art forward models of imaging systems to be matched with state-of-the-art priors or denoising models. This framework, which we term as Plug-and-Play priors, has the advantage that it dramatically simplifies software integration, and moreover, it allows state-of-the-art denoising methods that have no known formulation as an optimization problem to be used. We demonstrate with some simple examples how Plug-and-Play priors can be used to mix and match a wide variety of existing denoising models with a tomographic forward model, thus greatly expanding the range of possible problem solutions.

884 citations

Proceedings ArticleDOI
01 Dec 2013
TL;DR: This paper derives differentially private versions of stochastic gradient descent, and test them empirically to show that standard SGD experiences high variability due to differential privacy, but a moderate increase in the batch size can improve performance significantly.
Abstract: Differential privacy is a recent framework for computation on sensitive data, which has shown considerable promise in the regime of large datasets. Stochastic gradient methods are a popular approach for learning in the data-rich regime because they are computationally tractable and scalable. In this paper, we derive differentially private versions of stochastic gradient descent, and test them empirically. Our results show that standard SGD experiences high variability due to differential privacy, but a moderate increase in the batch size can improve performance significantly.

549 citations

Proceedings ArticleDOI
01 Dec 2014
TL;DR: The results confirm the importance of fine-tuning the feature representation for DNN training and show consistent improvements by discriminative training, whereas long short-term memory recurrent DNNs obtain the overall best results.
Abstract: This paper describes an in-depth investigation of training criteria, network architectures and feature representations for regression-based single-channel speech separation with deep neural networks (DNNs). We use a generic discriminative training criterion corresponding to optimal source reconstruction from time-frequency masks, and introduce its application to speech separation in a reduced feature space (Mel domain). A comparative evaluation of time-frequency mask estimation by DNNs, recurrent DNNs and non-negative matrix factorization on the 2nd CHiME Speech Separation and Recognition Challenge shows consistent improvements by discriminative training, whereas long short-term memory recurrent DNNs obtain the overall best results. Furthermore, our results confirm the importance of fine-tuning the feature representation for DNN training.

325 citations

Proceedings ArticleDOI
31 Jul 2013
TL;DR: In this article, a novel asynchronous alternating direction method of multipliers (ADMM) based distributed method for the general optimization problem is presented and it converges at the rate O(1/√k) where k is the iteration number.
Abstract: We consider a network of agents that are cooperatively solving a global optimization problem, where the objective function is the sum of privately known local objective functions of the agents and the decision variables are coupled via linear constraints. Recent literature focused on special cases of this formulation and studied their distributed solution through either subgradient based methods with O(1/√k) rate of convergence (where k is the iteration number) or Alternating Direction Method of Multipliers (ADMM) based methods, which require a synchronous implementation and a globally known order on the agents. In this paper, we present a novel asynchronous ADMM based distributed method for the general formulation and show that it converges at the rate O (1=k).

294 citations

Proceedings ArticleDOI
01 Dec 2016
TL;DR: A beam tracking method requiring to train only one beam pair to track a path in the analog beamforming architecture is developed, considering its low complexity which is suitable for mobile settings, the extended Kalman filter is chosen as the tracking filter.
Abstract: Millimeter wave (mmWave) is an attractive option for high data rate applications. Enabling mmWave communications requires appropriate beamforming, which is conventionally realized by a lengthy beam training process. Such beam training will be a challenge for applying mmWave to mobile environments. As a solution, a beam tracking method requiring to train only one beam pair to track a path in the analog beamforming architecture is developed. Considering its low complexity which is suitable for mobile settings, the extended Kalman filter is chosen as the tracking filter. Several effects impacting the performance of the proposed tracking algorithm, such as the signal-to-noise ratio (SNR) and array size, are investigated. It is found that at the same SNR, narrower beams, which are more sensitive to angular changes, can provide more accurate estimate. Too narrow beams, however, degrade tracking performance because beam misalignment could happen during the measurement. Finally, a comparison to prior work is given where it is shown that our approach is more suitable for fast-changing environments thanks to the low measurement overhead.

243 citations

Performance
Metrics
No. of papers from the Conference in previous years
YearPapers
20201
2019203
2018279
2017280
2016283
2015290