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Title: A comprehensive exploration of depthwise separable convolutions for real time 3D hand pose estimation through RGB images
Authors: COSTA, Willams de Lima
Keywords: Mídia e interação; Redes neurais
Issue Date: 28-Feb-2020
Publisher: Universidade Federal de Pernambuco
Citation: ALVES, Thayonara de Pontes. A comprehensive exploration of depthwise separable convolutions for realtime 3D hand pose estimation through RGB images. 2020. Dissertação (Mestrado em Ciência da Computação) - Universidade Federal de Pernambuco, Recife, 2020.
Abstract: Hand pose estimation is an important task in computer vision due to its various fields of application, but mainly for providing a natural interaction between humans and machines. There are significant challenges for solving this task, primarily due to the high degree of freedom that is present in the human hand, and the possibility of self-occlusion. We investigate the usage of depthwise separable convolutions, an optimized convolution operation, to speed-up the inference time for convolutional models trained for 3D hand pose estimation. We show that the execution time for this approach can be improved to be up to 34.28% faster, while maintaining the accuracy scores on the metrics proposed by the literature. Additionally, we performed an extensive exploration and analysis of the use of depthwise separable convolutions regarding common challenges in tracking such as blur and noise, aiming to understand better in which scenarios this type of convolution impacts on the tracker precision.
URI: https://repositorio.ufpe.br/handle/123456789/39491
Appears in Collections:Dissertações de Mestrado - Ciência da Computação

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