HCMay 22, 2019

Detecting Events of Daily Living Using Multimodal Data

arXiv:1905.09402v19 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of unobtrusive event detection for personal modeling, but it is incremental as it builds on existing multimodal recognition methods with a specific semantic enrichment technique.

The paper tackles the problem of automatically recognizing daily living events using multimodal data from smartphones and wearables, and demonstrates an approach that can abstract life experiences from 14 months of data for three users, focusing on eating activity as a complex example.

Events are fundamental for understanding how people experience their lives. It is challenging, however, to automatically record all events in daily life. An understanding of multimedia signals allows recognizing events of daily living and getting their attributes as automatically as possible. In this paper, we consider the problem of recognizing a daily event by employing the commonly used multimedia data obtained from a smartphone and wearable device. We develop an unobtrusive approach to obtain latent semantic information from the data, and therefore an approach for daily event recognition based on semantic context enrichment. We represent the enrichment process through an event knowledge graph that semantically enriches a daily event from a low-level daily activity. To show a concrete example of this enrichment, we perform an experiment with eating activity, which may be one of the most complex events, by using 14 months of data for three users. In this process, to unobtrusively complement the lack of semantic information, we suggest a new food recognition/classification method that focuses only on a physical response to food consumption. Experimental results indicate that our approach is able to show automatic abstraction of life experience. These daily events can then be used to create a personal model that can capture how a person reacts to different stimuli under specific conditions.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes