Litcius/Paper detail

Machine Learning for Multimedia Communications

Nikolaos Thomos, Thomas Maugey, Laura Toni

2022Sensors13 citationsDOIOpen Access PDF

Abstract

Machine learning is revolutionizing the way multimedia information is processed and transmitted to users. After intensive and powerful training, some impressive efficiency/accuracy improvements have been made all over the transmission pipeline. For example, the high model capacity of the learning-based architectures enables us to accurately model the image and video behavior such that tremendous compression gains can be achieved. Similarly, error concealment, streaming strategy or even user perception modeling have widely benefited from the recent learning-oriented developments. However, learning-based algorithms often imply drastic changes to the way data are represented or consumed, meaning that the overall pipeline can be affected even though a subpart of it is optimized. In this paper, we review the recent major advances that have been proposed all across the transmission chain, and we discuss their potential impact and the research challenges that they raise.

Topics & Concepts

Pipeline (software)Computer scienceTransmission (telecommunications)MultimediaPerceptionData compressionMeaning (existential)Artificial intelligenceMachine learningHuman–computer interactionTelecommunicationsPsychotherapistProgramming languagePsychologyNeuroscienceBiologyImage and Video Quality AssessmentAdvanced Data Compression TechniquesVideo Coding and Compression Technologies