Affiliation:
1. DGIST, Daegu, Republic of Korea
2. HERE, Berlin, Germany
3. Hanyang University, Gyeonggi-do, Republic of Korea
4. Ajou University, Gyunggi-Do, Republic of Korea
Abstract
With the advancement of technology in various domains, many efforts have been made to design advanced classification engines that aid the protection of civilians and their properties in different settings. In this work, we focus on a set of the population which is probably the most vulnerable: children. Specifically, we present
ChildSafe
, a classification system that exploits ratios of skeletal features extracted from children and adults using a 3D depth camera to classify visual characteristics between the two age groups. Specifically, we combine the ratio information into one bag-of-words feature for each sample, where each word is a histogram of the ratios. ChildSafe analyzes the words that are normalized within and between the two age groups and implements a fuzzy bin-based classification method that represents bin-boundaries using fuzzy sets. We train and evaluate ChildSafe using a large dataset of visual samples collected from 150 elementary school children and 150 adults, ranging in age from 7 to 50. Our results suggest that ChildSafe successfully detects children with a proper classification rate of up to 94%, a false-negative rate as low as 1.82%, and a low false-positive rate of 5.14%. We envision this work as a first step, an effective subsystem for designing child safety applications.
Funder
DGIST Research and Development Program
ICT 8 Future Planning for the project “Identifying Unmet Requirements for Future Wearable Devices in Designing Autonomous Clinical Event Detection Applications”
Ministry of Science
Ministry of Trade, Industry and Energy
Industrial Infrastructure Program for Fundamental Technologies
Institute for Information 8 Communications Technology Promotion (IITP) grant funded by the Korean government
Resilient Cyber-Physical Systems Research
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Networks and Communications
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