Wertner Alfred, Pammer-Schindler Viktoria, Czech Paul
2015
An Open Labelled Dataset for Mobile Phone Sensing Based Fall Detection
12th International Conference on Mobile and Ubiquitous Systems: Computing, Networking and Services
Fall detection is a classical use case for mobile phone sensing.Nonetheless, no open dataset exists that could be used totrain, test and compare fall detection algorithms.We present a dataset for mobile phone sensing-based fall detection.The dataset contains both accelerometer and gyroscopedata. Data were labelled with four types of falls(e.g., “stumblingâ€) and ten types of non-fall activities (e.g.,“sit downâ€). The dataset was collected with martial artistswho simulated falls. We used five different state-of-the-artAndroid smartphone models worn on the hip in a small bag.Due to the datasets properties of using multiple devices andbeing labelled with multiple fall- and non-fall categories, weargue that it is suitable to serve as benchmark dataset.
Wertner Alfred, Czech Paul, Pammer-Schindler Viktoria
2015
An Open Labelled Dataset for Mobile Phone Sensing Based Fall Detection
12th International Conference on Mobile and Ubiquitous Systems: Computing, Networking and Services
Fall detection is a classical use case for mobile phone sensing.Nonetheless, no open dataset exists that could be used totrain, test and compare fall detection algorithms.We present a dataset for mobile phone sensing-based fall detection.The dataset contains both accelerometer and gyroscopedata. Data were labelled with four types of falls(e.g., “stumblingâ€) and ten types of non-fall activities (e.g.,“sit downâ€). The dataset was collected with martial artistswho simulated falls. We used five different state-of-the-artAndroid smartphone models worn on the hip in a small bag.Due to the datasets properties of using multiple devices andbeing labelled with multiple fall- and non-fall categories, weargue that it is suitable to serve as benchmark dataset.