Detalhes do Documento

A comparative study of different image features for hand gesture machine learning

Autor(es): Trigueiros, Paulo cv logo 1 ; Ribeiro, António Fernando cv logo 2 ; Reis, Luis Paulo cv logo 3

Data: 2013

Identificador Persistente: http://hdl.handle.net/1822/25796

Origem: RepositóriUM - Universidade do Minho

Assunto(s): Hand gesture recognition; Machine vision; Hand features; Hog; Fourier descriptors; Centroid distance; Radial signature; Shi-Thomasi corner detection


Descrição
Vision-based hand gesture interfaces require fast and extremely robust hand detection, and gesture recognition. Hand gesture recognition for human computer interaction is an area of active research in computer vision and machine learning. The primary goal of gesture recognition research is to create a system, which can identify specific human gestures and use them to convey information or for device control. In this paper we present a comparative study of seven different algorithms for hand feature extraction, for static hand gesture classification, analysed with RapidMiner in order to find the best learner. We defined our own gesture vocabulary, with 10 gestures, and we have recorded videos from 20 persons performing the gestures for later processing. Our goal in the present study is to learn features that, isolated, respond better in various situations in human-computer interaction. Results show that the radial signature and the centroid distance are the features that when used separately obtain better results, being at the same time simple in terms of computational complexity.
Tipo de Documento Documento de conferência
Idioma Inglês
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