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Enabling Domain Experts to Train Efficient Few-Shot Incremental Landmark Recognition

Beteiligte Autor*innen der JOANNEUM RESEARCH:
Autor*innen:
Neuschmied, Helmut and Bailer, Werner
Abstract:
A webbased application for incremental training of landmark recognition, suitable for domain experts without machine learning expertise is presented. Its backend uses the finegrained image classification network APINet in a fewshot setting, making use of the twostage finetuning paradigm. The aim is to enable rapid training of a classifier for recognizing new landmarks in video content, supporting needs in media production. Using base models trained on two different datasets, we demonstrate the speed and effectiveness of the application in training the networks to detect new landmarks. In addition, our application provides the ability to retrain a previously learned landmark with further data, e.g. to improve performance for views or imaging conditions not well supported by the model. This feature ensures that the model remains uptodate with evolving datasets and environmental conditions, thereby improving its accuracy and adaptability over time.
Titel:
Enabling Domain Experts to Train Efficient Few-Shot Incremental Landmark Recognition
Herausgeber (Verlag):
IEEE

Publikationsreihe

Buchtitel
2024 International Conference on ContentBased Multimedia Indexing (CBMI)
Herausgeber(Verlag)
IEEE

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