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Robert Amelard

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Enhancing Food Intake Tracking in Long-Term Care with Automated Food Imaging and Nutrient Intake Tracking (AFINI-T) Technology

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Dec 08, 2021
Kaylen J. Pfisterer, Robert Amelard, Jennifer Boger, Audrey G. Chung, Heather H. Keller, Alexander Wong

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Temporal prediction of oxygen uptake dynamics from wearable sensors during low-, moderate-, and heavy-intensity exercise

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May 20, 2021
Robert Amelard, Eric T Hedge, Richard L Hughson

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Fully-Automatic Semantic Segmentation for Food Intake Tracking in Long-Term Care Homes

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Oct 24, 2019
Kaylen J Pfisterer, Robert Amelard, Audrey G Chung, Braeden Syrnyk, Alexander MacLean, Alexander Wong

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Assessing postural instability during cerebral hypoperfusion using sub-millimeter monocular 3D sway tracking

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Jul 11, 2019
Robert Amelard, Kevin R Murray, Eric T Hedge, Taylor W Cleworth, Mamiko Noguchi, Andrew Laing, Richard L Hughson

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Towards computer vision powered color-nutrient assessment of pureed food

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May 01, 2019
Kaylen J. Pfisterer, Robert Amelard, Braeden Syrnyk, Alexander Wong

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A new take on measuring relative nutritional density: The feasibility of using a deep neural network to assess commercially-prepared pureed food concentrations

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Nov 03, 2017
Kaylen J. Pfisterer, Robert Amelard, Audrey G. Chung, Alexander Wong

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Spatial probabilistic pulsatility model for enhancing photoplethysmographic imaging systems

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Jul 27, 2016
Robert Amelard, David A Clausi, Alexander Wong

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A spectral-spatial fusion model for robust blood pulse waveform extraction in photoplethysmographic imaging

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Jun 29, 2016
Robert Amelard, David A Clausi, Alexander Wong

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Non-contact hemodynamic imaging reveals the jugular venous pulse waveform

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Apr 21, 2016
Robert Amelard, Richard L Hughson, Danielle K Greaves, Kaylen J Pfisterer, Jason Leung, David A Clausi, Alexander Wong

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Non-contact transmittance photoplethysmographic imaging (PPGI) for long-distance cardiovascular monitoring

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Mar 23, 2015
Robert Amelard, Christian Scharfenberger, Farnoud Kazemzadeh, Kaylen J. Pfisterer, Bill S. Lin, Alexander Wong, David A. Clausi

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