A Graph-Based Message Passing Approach for Noisy Source Coding via Information Bottleneck Principle

Autoren: S. Hassanpour, D. Wübben, A. Dekorsy
Kurzfassung:

The main focus of this paper is on the problem of noisy source coding wherein observed signals from an inaccessible source shall be compressed. To that end, rather than resorting to the conventional methods from Rate-Distortion theory, the so-called Information Bottleneck paradigm is deployed in order to obtain a highly informative representing signal w.r.t. the given source. An efficient, generic and highly flexible graph-based message passing routine for clustering, known as the Affinity Propagation is successfully applied here as a novel treatment for that purpose. The fundamental differences and the performance-wise comparison w.r.t. the state-of-the-art KL-Means-IB algorithm is provided as well.

Dokumenttyp: Konferenzbeitrag
Veröffentlichung: Abu Dhabi, Vereinigte Arabische Emirate, 9. - 13. Dezember 2018
Konferenz: IEEE Global Communications Conference (GLOBECOM 2018)
Dateien:
GC_2018_Hassanpour.pdf807 KB
BibTEX
Zuletzt aktualisiert am 10.12.2018 von S. Hassanpour
AIT ieee tzi ith Fachbereich 1
© Arbeitsbereich Nachrichtentechnik - Universität BremenImpressum / Kontakt