BEGIN:VCALENDAR VERSION:2.0 PRODID:-//132.216.98.100//NONSGML kigkonsult.se iCalcreator 2.20.4// BEGIN:VEVENT UID:20260523T063018EDT-0795p60eLa@132.216.98.100 DTSTAMP:20260523T103018Z DESCRIPTION:Abstract\n\nImage Quality Assessment (IQA) plays a critical rol e in optimizing visual experiences by approximating human perception of im age quality. However\, existing IQA methods often fail to generalize acros s variations in illumination\, display properties\, and content\, which ar e all too common in real-world scenarios involving modern display technolo gies. In this thesis\, we address these challenges through a series of con tributions spanning perceptual studies and applications of deep learning f or IQA. First\, we conduct a subjective experiment to quantify the influen ce of ambient illumination on human perception of image quality. To comple ment these findings\, we introduce a framework that extends the applicabil ity of existing IQA methods to a wider range of illumination and display p arameters\, effectively modeling viewing conditions from complete darkness to bright daylight. Next\, we explore the application of vision transform ers (ViTs) for IQA\, analyzing the feature representations of various pre- trained ViTs to identify architectures better suited for IQA and to gain i nsights into how these models encode image quality distortions. Building o n this analysis\, we introduce Vision Transformer for Attention Modulated Image Quality (VTAMIQ)\, a novel full-reference IQA model that leverages V iTs to capture global dependencies in images and achieves state-of-the-art performance on standard IQA datasets. Finally\, while most existing IQA m ethods and datasets are tailored for Standard Dynamic Range (SDR) imaging\ , we address the challenges of training deep IQA models on High Dynamic Ra nge (HDR) data by integrating specialized fine-tuning and domain adaptatio n techniques. Models trained with our approach surpass previous baselines\ , converge significantly faster\, and reliably generalize to HDR inputs. A ltogether\, our findings offer valuable insights into how viewing conditio ns influence human perception of image quality and support the development of more robust and generalizable IQA models\, enhancing their adaptabilit y and performance in real-world applications.\n DTSTART:20250703T140000Z DTEND:20250703T160000Z LOCATION:Room 603\, McConnell Engineering Building\, CA\, QC\, Montreal\, H 3A 0E9\, 3480 rue University SUMMARY:PhD defence of Andrei Chubarau – Vision Transformers for Image Qual ity Assessment on High Dynamic Range Displays URL:/ece/channels/event/phd-defence-andrei-chubarau-vi sion-transformers-image-quality-assessment-high-dynamic-range-displays-365 928 END:VEVENT END:VCALENDAR