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Ming-Chun Huang

Researcher at Case Western Reserve University

Publications -  96
Citations -  1974

Ming-Chun Huang is an academic researcher from Case Western Reserve University. The author has contributed to research in topics: Computer science & Gait (human). The author has an hindex of 21, co-authored 80 publications receiving 1510 citations. Previous affiliations of Ming-Chun Huang include University of California, Los Angeles & Duke University.

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Journal ArticleDOI

Rapid electrochemical detection on a mobile phone

TL;DR: A compact mobile phone platform for rapid, quantitative biomolecular detection that consists of an embedded circuit for signal processing and data analysis, and disposable microfluidic chips for fluidic handling and biosensing.
Journal ArticleDOI

eCushion: A Textile Pressure Sensor Array Design and Calibration for Sitting Posture Analysis

TL;DR: A textile-based sensing system, called Smart Cushion, which analyzes the sitting posture of human being accurately and non-invasively and shows that the recognition rate of the system is in excess of 85.9%.
Proceedings ArticleDOI

Smart insole: a wearable system for gait analysis

TL;DR: With the proposed portable sensing system and effective feature extraction algorithm, the Smart Insole system enables precise gait analysis and can be extended to many potential applications such as fall prevention, life behavior analysis and networked wireless health systems.
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Designing a Robust Activity Recognition Framework for Health and Exergaming Using Wearable Sensors

TL;DR: A new robust stochastic approximation framework for enhanced classification of intensity-independent activity recognition of data where the class labels exhibit large variability, the data are of high dimensionality, and clustering algorithms are necessary is proposed.
Proceedings ArticleDOI

A dense pressure sensitive bedsheet design for unobtrusive sleep posture monitoring

TL;DR: The experimental results show that the proposed method enables reliable sleep posture recognition and offers better overall performance than state-of-the-art methods, achieving up to 83.0% precision and 83.2% recall on average.