about
Data mining in bone marrow transplant records to identify patients with high odds of survival.Autonomous unobtrusive detection of mild cognitive impairment in older adults.Mixture-Model Clustering of Pathological Gait Patterns.Interdisciplinary development of manual and automated product usability assessments for older adults with dementia: lessons learned.Towards a single sensor passive solution for automated fall detection.An Automated Classification of Pathological Gait Using Unobtrusive Sensing Technology.Automated classification of pathological gait after stroke using ubiquitous sensing technology.Automated Video Analysis of Handwashing Behavior as a Potential Marker of Cognitive Health in Older Adults.Use of Accelerometer-Based Feedback of Walking Activity for Appraising Progress With Walking-Related Goals in Inpatient Stroke Rehabilitation: A Randomized Controlled Trial.Noncontact Vision-Based Cardiopulmonary Monitoring in Different Sleeping Positions.Automated vision-based analysis of levodopa-induced dyskinesia with deep learning.A non-contact vision-based system for respiratory rate estimation.Predicting Neck Fluid Accumulation While Supine.Video analysis of "YouTube funnies" to aid the study of human gait and falls - preliminary results and proof of concept.Automatic Detection of Compensation During Robotic Stroke Rehabilitation Therapy.Concurrent validity of the Microsoft Kinect for Windows v2 for measuring spatiotemporal gait parameters.Vision-based approach for long-term mobility monitoring: Single case study following total hip replacement.Use of Free-Living Step Count Monitoring for Heart Failure Functional Classification: Validation StudyThe Rubber Hand Illusion in Healthy Younger and Older AdultsDistinguishing Obstructive Versus Central Apneas in Infrared Video of Sleep Using Deep Learning: Validation Study
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hulumtues
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հետազոտող
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Babak Taati
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Babak Taati
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Babak Taati
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Babak Taati
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Babak Taati
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Babak Taati
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Babak Taati
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Babak Taati
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Babak Taati
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Babak Taati
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