Abstract

Children’s healthcare is a relevant issue, especially the prevention of domestic accidents, since it has even been defined as a global health problem. Children’s activity classification generally uses sensors embedded in children’s clothing, which can lead to erroneous measurements for possible damage or mishandling. Having a non-invasive data source for a children’s activity classification model provides reliability to the monitoring system where it is applied. This work proposes the use of environmental sound as a data source for the generation of children’s activity classification models, implementing feature selection methods and classification techniques based on Bayesian networks, focused on the recognition of potentially triggering activities of domestic accidents, applicable in child monitoring systems. Two feature selection techniques were used: the Akaike criterion and genetic algorithms. Likewise, models were generated using three classifiers: naive Bayes, semi-naive Bayes and tree-augmented naive Bayes. The generated models, combining the methods of feature selection and the classifiers used, present accuracy of greater than 97% for most of them, with which we can conclude the efficiency of the proposal of the present work in the recognition of potentially detonating activities of domestic accidents.

Highlights

  • Children’s healthcare is a topic of great global relevance, with different variants and approaches depending on the field where it is applied

  • This paper proposes the generation of a children’s activity classification model, using environmental sound that can be applied in child monitoring systems focused on domestic accident prevention

  • This section describes the results obtained from the experimentation performed for the generation of the children’s activity classification models, using environmental sound as proposed in this work

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Summary

Introduction

Children’s healthcare is a topic of great global relevance, with different variants and approaches depending on the field where it is applied. Children’s domestic accidents are not exclusive to underdeveloped countries; according to UNICEF [2], injuries caused by domestic accidents are responsible for more than 40% of the deaths of children between the ages of 1 and 14 in developed nations. The Akaike information criterion (AIC) is a widely used statistical model selection tool [27], which has been applied to feature selection processes, showing good results [18]. This model selection technique is based on the construction of models considering all the combinations that can be made with the parameters of the model. This process is performed until there are no more variables that meet the entry criteria [29,30]

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