SymDetector: detecting sound-related respiratory symptoms using smartphones

X Sun, Z Lu, W Hu, G Cao - Proceedings of the 2015 ACM International …, 2015 - dl.acm.org
X Sun, Z Lu, W Hu, G Cao
Proceedings of the 2015 ACM International Joint Conference on Pervasive and …, 2015dl.acm.org
This paper proposes SymDetector, a smartphone based application to unobtrusively detect
the sound-related respiratory symptoms occurred in a user's daily life, including sneeze,
cough, sniffle and throat clearing. SymDetector uses the built-in microphone on the
smartphone to continuously monitor a user's acoustic data and uses multi-level processes to
detect and classify the respiratory symptoms. Several practical issues are considered in
developing SymDetector, such as users' privacy concerns about their acoustic data …
This paper proposes SymDetector, a smartphone based application to unobtrusively detect the sound-related respiratory symptoms occurred in a user's daily life, including sneeze, cough, sniffle and throat clearing. SymDetector uses the built-in microphone on the smartphone to continuously monitor a user's acoustic data and uses multi-level processes to detect and classify the respiratory symptoms. Several practical issues are considered in developing SymDetector, such as users' privacy concerns about their acoustic data, resource constraints of the smartphone and different contexts of the smartphone. We have implemented SymDetector on Galaxy S3 and evaluated its performance in real experiments involving 16 users and 204 days. The experimental results show that SymDetector can detect these four types of respiratory symptoms with high accuracy under various conditions.
ACM Digital Library
以上显示的是最相近的搜索结果。 查看全部搜索结果