Швай, НадіяРонська, Дарина2024-04-102024-04-102022https://ekmair.ukma.edu.ua/handle/123456789/28818Active Learning allows to spend less time on data labeling which is vastly beneficial in Computer Vision with continuously growing number of datasets and its images. It is achieved by smarter strategy than random one to queue the images for labeling that allows to give most informative images to the model first. In this work state-of-the-art Multiple Instance Active Learning for Object Detection (MI-AOD) method is improved by the changes in its uncertainty function which corresponds for informativeness of the image. Also, the statement of MI-AOD authors about its usage for noisy images filtering is proved.ukMI-AOD: Multiple Instance Active Learning for Object Detectionрroposed metrics for uncertainty re-weightingmetrics comparison and resultsmotivation to use MI-AOD for blurred pictures filteringмагістерська роботаАктивне навчання у задачі виявлення об’єктівOther