BAYESIAN SEMANTIC SEGMENTATION ACTIVE LEARNING WITH BETA APPROXIMATION

Training of a machine vision model, a segmentation model, is performed by using an acquisition function for a small number of pixels of one or more training images. The acquisition function uses first mutual information and second mutual information to identify unlabelled pixels which are labelled w...

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Bibliographic Details
Main Authors WOO, Jae Oh, HAO, Heng, MOON, Hankyu, BANGERT, Patrick, DIDARI, Sima
Format Patent
LanguageEnglish
Published 16.11.2023
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Summary:Training of a machine vision model, a segmentation model, is performed by using an acquisition function for a small number of pixels of one or more training images. The acquisition function uses first mutual information and second mutual information to identify unlabelled pixels which are labelled with high uncertainty when predicting possible label values. Training, prediction of labels, identifying pixels with highly uncertain labels, obtaining labels only for those pixels with highly uncertain labels and retraining are performed iteratively to finally provide the machine vision model. The iterative approach uses very few labelled pixels to obtain the final machine vision model. The machine vision model accurately labels areas of a data image.
Bibliography:Application Number: US202318114820