Selected article for: "accuracy detect and machine learning"

Author: Tolosana, Ruben; Ruiz-Garcia, Juan Carlos; Vera-Rodriguez, Ruben; Herreros-Rodriguez, Jaime; Romero-Tapiador, Sergio; Morales, Aythami; Fierrez, Julian
Title: Child-Computer Interaction: Recent Works, New Dataset, and Age Detection
  • Cord-id: j1n5sn5k
  • Document date: 2021_2_2
  • ID: j1n5sn5k
    Snippet: We overview recent research in Child-Computer Interaction and describe our framework ChildCI intended for: i) generating a better understanding of the cognitive and neuromotor development of children while interacting with mobile devices, and ii) enabling new applications in e-learning and e-health, among others. Our framework includes a new mobile application, specific data acquisition protocols, and a first release of the ChildCI dataset (ChildCIdb v1), which is planned to be extended yearly t
    Document: We overview recent research in Child-Computer Interaction and describe our framework ChildCI intended for: i) generating a better understanding of the cognitive and neuromotor development of children while interacting with mobile devices, and ii) enabling new applications in e-learning and e-health, among others. Our framework includes a new mobile application, specific data acquisition protocols, and a first release of the ChildCI dataset (ChildCIdb v1), which is planned to be extended yearly to enable longitudinal studies. In our framework children interact with a tablet device, using both a pen stylus and the finger, performing different tasks that require different levels of neuromotor and cognitive skills. ChildCIdb comprises more than 400 children from 18 months to 8 years old, considering therefore the first three development stages of the Piaget's theory. In addition, and as a demonstration of the potential of the ChildCI framework, we include experimental results for one of the many applications enabled by ChildCIdb: children age detection based on device interaction. Different machine learning approaches are evaluated, proposing a new set of 34 global features to automatically detect age groups, achieving accuracy results over 90% and interesting findings in terms of the type of features more useful for this task.

    Search related documents:
    Co phrase search for related documents
    • accuracy result achieve and achieve result: 1, 2
    • accuracy result and achieve result: 1, 2