Simon Simonsson
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Papers from this author
Location Prediction in Real Homes of Older Adults based on K-Means in Low-Resolution Depth Videos
Simon Simonsson, Flávia Dias Casagrande, Evi Zouganeli
Auto-TLDR; Semi-supervised Learning for Location Recognition and Prediction in Smart Homes using Depth Video Cameras
Abstract Slides Poster Similar
In this paper we propose a novel method for location recognition and prediction in smart homes based on semi-supervised learning. We use data collected from low-resolution depth video cameras installed in four apartments with older adults over 70 years of age, and collected during a period of one to seven weeks. The location of the person in the depth images is detected by a person detection algorithm adapted from YOLO (You Only Look Once). The locations extracted from the videos are then clustered using K-means clustering. Sequence prediction algorithms are used to predict the next cluster (location) based on the previous clusters (locations). The accuracy of predicting the next location is up to 91%, a significant improvement compared to the case where binary sensors are placed in the apartment based on human intuition. The paper presents an analysis on the effect of the memory length (i.e. the number of previous clusters used to predict the next one), and on the amount of recorded data required to converge.