Visible to the public On a Hashing-Based Enhancement of Source Separation Algorithms Over Finite Fields With Network Coding Perspectives

TitleOn a Hashing-Based Enhancement of Source Separation Algorithms Over Finite Fields With Network Coding Perspectives
Publication TypeJournal Article
Year of Publication2014
AuthorsNemoianu, I.-D., Greco, C., Cagnazzo, M., Pesquet-Popescu, B.
JournalMultimedia, IEEE Transactions on
Volume16
Pagination2011-2024
Date PublishedNov
ISSN1520-9210
Keywordsblind source separation, BSS, channel coding, classical entropy-based separation method, combination coefficient, compressed media sources, Context, Decoding, decoding rate, encoding, Entropy, finite fields, Galois fields, hashing-based enhancement, independent component analysis, loss immunity, mixing process, Multimedia communication, multimedia networking, multimedia transmission, network coding, network coding perspective, nonlinear codes, nonlinear encoding, nonlinear message digest, observed mixtures, overhead cost reduction, per-symbol encoding, relaying linear packet combination, scaling ambiguity, Source separation, source separation algorithm, source signal recovery, throughput maximization, Vectors, video coding
Abstract

Blind Source Separation (BSS) deals with the recovery of source signals from a set of observed mixtures, when little or no knowledge of the mixing process is available. BSS can find an application in the context of network coding, where relaying linear combinations of packets maximizes the throughput and increases the loss immunity. By relieving the nodes from the need to send the combination coefficients, the overhead cost is largely reduced. However, the scaling ambiguity of the technique and the quasi-uniformity of compressed media sources makes it unfit, at its present state, for multimedia transmission. In order to open new practical applications for BSS in the context of multimedia transmission, we have recently proposed to use a non-linear encoding to increase the discriminating power of the classical entropy-based separation methods. Here, we propose to append to each source a non-linear message digest, which offers an overhead smaller than a per-symbol encoding and that can be more easily tuned. Our results prove that our algorithm is able to provide high decoding rates for different media types such as image, audio, and video, when the transmitted messages are less than 1.5 kilobytes, which is typically the case in a realistic transmission scenario.

URLhttps://ieeexplore.ieee.org/document/6862888/
DOI10.1109/TMM.2014.2341923
Citation Key6862888