| Literature DB >> 29553145 |
Daniel Castro1, Steven Hickson1, Vinay Bettadapura1, Edison Thomaz1, Gregory Abowd1, Henrik Christensen1, Irfan Essa1.
Abstract
We present a method to analyze images taken from a passive egocentric wearable camera along with the contextual information, such as time and day of week, to learn and predict everyday activities of an individual. We collected a dataset of 40,103 egocentric images over a 6 month period with 19 activity classes and demonstrate the benefit of state-of-the-art deep learning techniques for learning and predicting daily activities. Classification is conducted using a Convolutional Neural Network (CNN) with a classification method we introduce called a late fusion ensemble. This late fusion ensemble incorporates relevant contextual information and increases our classification accuracy. Our technique achieves an overall accuracy of 83.07% in predicting a person's activity across the 19 activity classes. We also demonstrate some promising results from two additional users by fine-tuning the classifier with one day of training data.Entities:
Keywords: Activity Prediction; Convolutional Neural Networks; Deep Learning; Egocentric Vision; Health; Late Fusion Ensemble; Wearable Computing
Year: 2015 PMID: 29553145 PMCID: PMC5851485 DOI: 10.1145/2802083.2808398
Source DB: PubMed Journal: Proc Int Symp Wearable Comput ISSN: 1550-4816