2020
DOI: 10.3390/s20092576
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Person Re-ID by Fusion of Video Silhouettes and Wearable Signals for Home Monitoring Applications

Abstract: The use of visual sensors for monitoring people in their living environments is critical in processing more accurate health measurements, but their use is undermined by the issue of privacy. Silhouettes, generated from RGB video, can help towards alleviating the issue of privacy to some considerable degree. However, the use of silhouettes would make it rather complex to discriminate between different subjects, preventing a subject-tailored analysis of the data within a free-living, multi-occupancy home. This l… Show more

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Cited by 10 publications
(6 citation statements)
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“…Providing greater support to informal caregivers and other household residents who may interact with the device and perform actions with it, on behalf of another resident, should be considered. Investigations into this type of feature support could build on existing work in the AI domain, detecting multi-user interactions with smart devices [44,45].…”
Section: Credibility and Intersubjectivitymentioning
confidence: 99%
“…Providing greater support to informal caregivers and other household residents who may interact with the device and perform actions with it, on behalf of another resident, should be considered. Investigations into this type of feature support could build on existing work in the AI domain, detecting multi-user interactions with smart devices [44,45].…”
Section: Credibility and Intersubjectivitymentioning
confidence: 99%
“…Because video and IMU sensors provide heterogeneous data streams, the late feature fusion is a popular technique for combining the modalities. For example, Masullo et al [94] focused on privacy-preserving techniques for home monitoring through videos and wearable signals. User re-identification and monitoring were achieved through silhouettes extracted from videos and then merged with acceleration readings to estimate calorie expenditure for different activities.…”
Section: Video and Inertial Unitsmentioning
confidence: 99%
“…Moreover, while vision has proved to be a powerful modality for evaluating PD, privacy issues in home settings has limited research on RGB data. To deal with this, we reduce the means for identification by taking an approach similar to [ 28 , 29 ], in which human silhouettes are extracted and RGB and depth data are discarded.…”
Section: Related Workmentioning
confidence: 99%
“…[ 33 , 34 ] use transformer-based models to discover the inherent semantic correlations between vision and language. However, a relatively small part of research in the multimodal learning literature deviates by focusing on other data types such as vision and body-worn IMU data [ 28 , 29 , 41 , 42 ], where the modalities are mainly correlated due to the body movements of the subjects. Among these works, [ 28 ] proposes a network, called CaloriNet, for fusing accelerometer and silhouette data to estimate the calorie expenditure of the subjects.…”
Section: Related Workmentioning
confidence: 99%