Fernandes, Marcelo Augusto CostaGoldbarg, Mateus Arnaud Santos de Sousa2021-09-242021-09-242021-09-10GOLDBARG, Mateus Arnaud Santos de Sousa, Análise de técnicas de compressão em redes neurais profundas por poda em dataset de imagens. 2021. 48f. Trabalho de Conclusão de Curso (Graduação em Engenharia de Computação), Centro de Tecnologia. Universidade Federal do Rio Grande do Norte, Natal, 2021https://repositorio.ufrn.br/handle/123456789/38053Deep neural network techniques have been successfully used for image classification using convolutional neural networks. However, deep learning algorithms perform a lot of mathematical operations. These operations can be a bottleneck in the process of large amounts of images. In low-cost microcontrollers, these operations can result in a significant increase in energy consumption, showing the need to apply compression techniques for these networks. Currently, most of the deep networks used or image classification are not optimized. The purpose of this work is to optimize a convolutional neural network using the technique of data compression by pruning. During training, the technique is to remove the weights at each batch, instead of removing weights only in the first batch of each epoch. This strategy was applied to classify 10,000 images from 10 different classes. It was possible to remove approximately 82% of the parameters from the deep neural network while maintaining high accuracy. These results shows that the batch weight removal technique proved to be effective for this application.Attribution 3.0 Brazilhttp://creativecommons.org/licenses/by/3.0/br/Classificação de imagensImage classificationRedes Neurais ProfundasDeep Neural NetworksCompressão de ModeloModel CompressionPodaPruningTreinamento de ModeloModel TrainingAnálise de técnicas de compressão em redes neurais profundas por poda em dataset de imagensAnalysis of compression techniques by pruning in deep neural networks using image datasetbachelorThesis