Tianyi Zhang, Shiquan Zhang, Le Fang, Hong Jia, Vassilis Kostakos, Simon D'Alfonso
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AutoJournaling: A Context-Aware Journaling System Leveraging MLLMs on Smartphone Screenshots
Journaling offers significant benefits, including fostering self-reflection,
enhancing writing skills, and aiding in mood monitoring. However, many people
abandon the practice because traditional journaling is time-consuming, and
detailed life events may be overlooked if not recorded promptly. Given that
smartphones are the most widely used devices for entertainment, work, and
socialization, they present an ideal platform for innovative approaches to
journaling. Despite their ubiquity, the potential of using digital phenotyping,
a method of unobtrusively collecting data from digital devices to gain insights
into psychological and behavioral patterns, for automated journal generation
has been largely underexplored. In this study, we propose AutoJournaling, the
first-of-its-kind system that automatically generates journals by collecting
and analyzing screenshots from smartphones. This system captures life events
and corresponding emotions, offering a novel approach to digital phenotyping.
We evaluated AutoJournaling by collecting screenshots every 3 seconds from
three students over five days, demonstrating its feasibility and accuracy.
AutoJournaling is the first framework to utilize seamlessly collected
screenshots for journal generation, providing new insights into psychological
states through digital phenotyping.