Proceedings of the 1st International Workshop on Earable Computing 2019
DOI: 10.1145/3345615.3361136
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Using an in-Ear Wearable to Annotate Activity Data across Multiple Inertial Sensors

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Cited by 18 publications
(15 citation statements)
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“…Our between-subject re-evaluation of known algorithms on a broader depth and rate range dataset allowed us to find ideal tuning parameters and identify the Bandpass algorithm as the most reliable approach. Our initial results regarding the popular earable platform are particularly encouraging, given their broad availability, and high user acceptance [9]. Though not mandatory, fusing sensors reduced the error further and outperformed existing rescuer-centered principles.…”
Section: Discussionmentioning
confidence: 83%
“…Our between-subject re-evaluation of known algorithms on a broader depth and rate range dataset allowed us to find ideal tuning parameters and identify the Bandpass algorithm as the most reliable approach. Our initial results regarding the popular earable platform are particularly encouraging, given their broad availability, and high user acceptance [9]. Though not mandatory, fusing sensors reduced the error further and outperformed existing rescuer-centered principles.…”
Section: Discussionmentioning
confidence: 83%
“…Earable devices were used to monitor multiple diseases and health conditions in 16% (8/51) of the studies, namely, brain, cardiac, and respiratory functions [ 65 ]; cardiovascular status, sweating, and motion [ 66 ]; HR and breathing rate [ 67 ]; respiration and posture [ 21 ]; metabolic functions in relation to fever, insomnia, fatigue, and depression [ 22 ]; gait classification [ 68 ]; cardiovascular, metabolic, and mental disorders, including stress and pain response [ 69 ]; and chronic stress, cognitive dysfunctions, depression, and CVD [ 70 ]. In another 12% (6/51) of the studies, earable devices were used to monitor various aspects of health status, namely, thermoregulation [ 71 ], fertility [ 72 ], heat stress [ 73 ], tongue movements [ 18 ], facial expressions [ 74 ], and physical activity [ 75 ].…”
Section: Resultsmentioning
confidence: 99%
“…Instead of explicit synchronization actions, signal couplings, or context markers, Hölzemann et al [9] utilize the uniqueness of variations present in accelerometer signals from inertial measurement units (IMU) to align the independently recorded time series. The alignment, with an accuracy in the order of seconds, requires sufficient periods of resting with low variations as well as similarities and accordance in the simultaneous measurements at diverse locations such as head and wrist.…”
Section: A Present Synchronization Methodsmentioning
confidence: 99%