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versión impresa ISSN 0012-7353
Resumen
MONSALVE-PULIDO, Julián Alberto y PARRA-RODRIGUEZ, Carlos Alberto. Characterization of postures to analyze people’s emotions using Kinect technology. Dyna rev.fac.nac.minas [online]. 2018, vol.85, n.205, pp.256-263. ISSN 0012-7353. https://doi.org/10.15446/dyna.v85n205.69470.
This article synthesizes the research undertaken into the use of classification techniques that characterize people's positions, the objective being to identify emotions (astonishment, anger, happiness and sadness). We used a three-phase exploratory research methodology, which resulted in technological appropriation and a model that classified people’s emotions (in standing position) using the Kinect Skeletal Tracking algorithm, which is a free software. We proposed a feature vector for pattern recognition using classification techniques such as SVM, KNN, and Bayesian Networks for 17,882 pieces of data that were obtained in a 14-person training sample. As a result, we found that that the KNN algorithm has a maximum effectiveness of 89.0466%, which surpasses the other selected algorithms.
Palabras clave : analysis of emotions; recognition of postures; free software; Kinect, KNN.