Evaluating machine learning methodologies for multi-domain learning in image classification

Detalhes bibliográficos
Ano de defesa: 2022
Autor(a) principal: Bender, Ihan Belmonte
Orientador(a): Araújo, Ricardo Matsumura de
Banca de defesa: Não Informado pela instituição
Tipo de documento: Dissertação
Tipo de acesso: Acesso aberto
Idioma: por
Instituição de defesa: Universidade Federal de Pelotas
Programa de Pós-Graduação: Programa de Pós-Graduação em Computação
Departamento: Centro de Desenvolvimento Tecnológico
País: Brasil
Palavras-chave em Português:
Área do conhecimento CNPq:
Link de acesso: http://guaiaca.ufpel.edu.br/handle/prefix/8442
Resumo: When training machine learning models, it is usually desired that the model learns to execute a specific task. This is commonly achieved by exposing this agent to data related to the task that should be learned. It is also expected that the model is going to be evaluated or used in real world applications receiving as input data samples that are similar to the ones used during training, like images taken from similar devices, therefore having similar features, which we call data domains or data sources. However, there are some cases in which we expect a model to properly perform a task in multiple different domains at the same time, being able to classify images from high definition pictures of objects as well as drawings of the same objects, for example. We propose and evaluate two novel techniques to train a single model to perform well on multiple domains at the same time, for a single task. One of the proposed techniques, we call Loss Sum, was able to achieve good performance when evaluated on different domains, both to domains already seen on training (multi-domain learning) and never seen before domains (domain-generalization).