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Robust and adaptive diffusion-based classification in distributed networks

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TLDR
Two robust and adaptive distributed hybrid classification algorithms are introduced that are designed in a way that they are applicable to on-line classification problems and are insensitive to outliers.
Abstract
Distributed adaptive signal processing and communication networking are rapidly advancing research areas which enable new and powerful signal processing tasks, e.g., distributed speech enhancement in adverse environments. An emerging new paradigm is that of multiple devices cooperating in multiple tasks (MDMT). This is different from the classical wireless sensor network (WSN) setup, in which multiple devices perform one single joint task. A crucial first step in order to achieve a benefit, e.g., a better node-specific audio signal enhancement, is the common unique labeling of all relevant sources that are observed by the network. This challenging research question can be addressed by designing adaptive data clustering and classification rules based on a set of noisy unlabeled sensor observations. In this paper, two robust and adaptive distributed hybrid classification algorithms are introduced. They consist of a local clustering phase that uses a small part of the data with a subsequent, fully distributed on-line classification phase. The classification is performed by means of distance-based similarity measures. In order to deal with the presence of outliers, the distances are estimated robustly. An extensive simulation-based performance analysis is provided for the proposed algorithms. The distributed hybrid classification approaches are compared to a benchmark algorithm where the error rates are evaluated in dependence of different WSN parameters. Communication cost and computation time are compared for all algorithms under test. Since both proposed approaches use robust estimators, they are, to a certain degree, insensitive to outliers. Furthermore, they are designed in a way that they are applicable to on-line classification problems.

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Citations
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Journal ArticleDOI

Heterogeneous and Multitask Wireless Sensor Networks—Algorithms, Applications, and Challenges

TL;DR: An overview of applications in the field of heterogeneous and multitask WSNs with special focus on the signal processing aspects is given and a general overview of the existing algorithms for distributed node-specific estimation is provided.

Speech And Audio Processing In Adverse Environments

TL;DR: Thank you very much for downloading speech and audio processing in adverse environments, this book will help people cope with some infectious bugs inside their desktop computer.
Journal ArticleDOI

Gravitational Clustering: A simple, robust and adaptive approach for distributed networks

TL;DR: A new method called Gravitational Clustering (GC) is proposed to adaptively estimate the time-varying number of clusters based on a set of feature vectors to exploit the physical principle of gravitational force between mass units.
Proceedings ArticleDOI

In-network adaptive cluster enumeration for distributed classification and labeling

TL;DR: This work considers the problem of estimating the number of data-clusters in the distributed adaptive network set-up and proposes two distributed adaptive cluster enumeration methods, which combine the diffusion principle, where the nodes share information within their local neighborhood only (without fusion center), with the X-means and the PG-mean cluster enumerations.
References
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Journal ArticleDOI

Robust Estimation of a Location Parameter

TL;DR: In this article, a new approach toward a theory of robust estimation is presented, which treats in detail the asymptotic theory of estimating a location parameter for contaminated normal distributions, and exhibits estimators that are asyptotically most robust (in a sense to be specified) among all translation invariant estimators.
Book

Robust Statistics: Theory and Methods

TL;DR: Robust Statistics enables the reader to select and use the most appropriate robust method for their particular statistical model, and describes the theoretical and operational aspects of robust methods separately, so the reader can choose to focus on one or the other.
Proceedings ArticleDOI

Instrumenting the world with wireless sensor networks

TL;DR: This work identifies opportunities and challenges for distributed signal processing in networks of these sensing elements and investigates some of the architectural challenges posed by systems that are massively distributed, physically-coupled, wirelessly networked, and energy limited.
Journal ArticleDOI

Diffusion LMS Strategies for Distributed Estimation

TL;DR: This work motivates and proposes new versions of the diffusion LMS algorithm that outperform previous solutions, and provides performance and convergence analysis of the proposed algorithms, together with simulation results comparing with existing techniques.
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