Author_Institution :
Sch. of Comput. Eng., Nanyang Technol. Univ., Singapore, Singapore
Abstract :
Human, especially elderly, require frequent attention, continuous companionship, and deep understanding from the others. To provide more specific and appropriate tender care to the elderly, knowing their affective states is a great advantage. Recent work on human emotion recognition shows promising results that the expressive emotion can be successfully captured through visual, audio, and keyboard or touchpad stroke pattern signals. Furthermore, human activities are shown to be accurately recognizable with context by non-intrusive sensors within or connected to the smartphones. In this paper, we propose a computational model to characterize the affective states of the elderly based on the recognizable daily activities. Therefore, by integrating such an understanding module into a humanoid agent residing in the smartphone platform, we make the mobile agent more human-like. The initial knowledge of the activity-affect associations is taken from published work in psychology and gerontology. Based on the provided training signals, our model adapts the activity-affect knowledge accordingly. Consequently, by modeling mood awareness of the elderly, our agent can carry out more specific task and provide more appropriate tender care.
Keywords :
assisted living; emotion recognition; geriatrics; humanoid robots; mobile robots; psychology; sensors; service robots; smart phones; activity-affect associations; elderly care; elderly mood awareness modeling; gerontology; human activities; human emotion recognition; mobile humanoid agent; nonintrusive sensors; psychology; recognizable daily activities; smartphone platform; touchpad stroke pattern signals; Active appearance model; Computational modeling; Mood; Senior citizens; Smart phones; Training; Vectors;