Title :
On the measurement of image quality perception using frontal EEG analysis
Author :
Perez, J.M. ; Delechelle, Eric
Author_Institution :
Lab. Image, Univ. Paris Est Creteil, Vitry-sur-Seine, France
Abstract :
The question of objective measurement of quality of images remains an opened issue. In this paper, we conduced a study concerning the direct measurement of perception of image quality using frontal electroencephalography (EEG). In our work, subjects viewed a series of images for a short predefined period of time while their brain activity was registered using a unique frontal probe EEG instrumentation. The images was organised in 3 classes : sharp, blurry or noisy. Then, by formalizing the task of classification as a supervised learning problem, we have been able correctly identify, on a single-trial basis, the type of images visualized by the user using only their EEG signal. In the context of networked content distributors, this kind of online measurement becomes critical as the objective is to maximize the so-called quality of experience (QoE) of their users while rationalizing their infrastructure utilization.
Keywords :
electroencephalography; image classification; image restoration; learning (artificial intelligence); medical image processing; quality of experience; EEG signal; QoE; blurry image; brain activity; frontal EEG analysis; frontal electroencephalography; frontal probe EEG instrumentation; image classification; image quality perception measurement; infrastructure utilization; networked content distributors; noisy image; objective measurement; online measurement; quality of experience; sharp image; supervised learning problem; Brain modeling; Context; Electroencephalography; Mathematical model; Support vector machines; Visualization;
Conference_Titel :
Smart Communications in Network Technologies (SaCoNeT), 2013 International Conference on
Conference_Location :
Paris
DOI :
10.1109/SaCoNeT.2013.6654581