Título: Análise de Amostras Sintéticas de Sinais de Sonar Passivo Geradas por Redes Neurais Generativas Adversariais
Autores: Julio de Castro Vargas Fernandes, Natanael Nunes de Moura Junior, José Manoel de Seixas
Resumo: In naval warfare, several techniques have been developed for the detection and classification of war vessels. Given the confidential nature of the data it is extremely difficult to get a hold of large quantities of data which makes it extremely hard to use techniques that rely on abundant data, such as deep learning. This paper proposes the use of generative adversarial neural networks for the generation of synthetic samples that can later be used in training of classifiers. This paper focuses on the generation process and the qualifying of such samples.
Palavras-chave: Sonar Systems, Neural Networks, Generative Adversarial Neural Networks (GAN), Deep Learning.
Código DOI: 10.21528/CBIC2019-64
Artigo em pdf: CBIC2019-64.pdf
Arquivo BibTeX: CBIC2019-64.bib