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Proceedings ArticleDOI

Neonatal Face Tracking for Non-Contact Continuous Patient Monitoring

TLDR
Compared to a static ROI, the proposed semi-automated method achieves significantly improved tracking of the patient’s face, as demonstrated by an area under the curve > 0.63 across all patients.
Abstract
Noncontact video-based patient monitoring promises several advantages over wearable sensors, particularly for patients in the NICU who have fragile skin. However, such approaches often require definition of a region-of-interest (ROI), such as the patient’s forehead. For example, a number of neonatal monitoring studies have estimated heart rate and respiration from video by first manually cropping the face of the patient before performing analyses within that region. Relying on a static ROI can fail due to patient motion or during clinical interventions, thereby demanding additional manual ROI selection over the course of the monitoring period. Widely used face detection algorithms tend to fail in a neonatal context. We therefore propose a semi-automated method where the ROI is automatically and repeatedly reinitialized to ensure robustness of the ROI for continuous monitoring. Factors such as the displacement of the patient and the change in patient poses are addressed using multiple computer vision techniques before selecting a comprehensive method for ROI tracking. Results were obtained from three patients admitted at the NICU using 20-minute videos including periods of rest, motion, and occlusion events. Compared to a static ROI, the proposed method achieves significantly improved tracking of the patient’s face, as demonstrated by an area under the curve > 0.63 across all patients.

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Citations
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Proceedings ArticleDOI

Noncontact Neonatal Respiration Rate Estimation Using Machine Vision

TL;DR: In this paper, a deep learning algorithm for automatic detection of the face and chest area of the neonate was developed and compared the performance of various techniques for noncontact respiration rate (RR) estimation.
Journal ArticleDOI

NICUface: Robust Neonatal Face Detection in Complex NICU Scenes

TL;DR: It is demonstrated how fine-tuning can increase neonatal face detector robustness, resulting in robust NICUface models, which address NICU-specific challenges such as ongoing clinical intervention, phototherapy lighting, occlusions from hospital equipment, etc.
Journal ArticleDOI

NICUface: Robust Neonatal Face Detection in Complex NICU Scenes

- 01 Jan 2022 - 
TL;DR: In this paper , a large and diverse neonatal dataset was gathered from actual patients admitted to the NICU across three studies and gold standard face annotations were completed, and fine-tuned NICUface models, gold-standard face annotation data, and face orientation estimation method were also released here.
Proceedings ArticleDOI

Fusing Pressure-Sensitive Mat Data with Video through Multi-Modal Registration

TL;DR: In this paper, the authors explored the use of various transforms to achieve registration between the video image plane and the pressure sensitive mat (PSM) with the ultimate goal of fusing PSM and video modalities of the patient dataset.
Proceedings ArticleDOI

Transfer Learning Approaches for Neonate Head Localization from Pressure Images

TL;DR: The pretrained CNN portion of the PressureNet model, a deep learning model that estimates adult pose given a pressure image, is used for transfer learning for a neonatal population to demonstrate the potential for cross-domain transfer learning between RGB image and PSM domains.
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