Pixel Intensity Tracking for Remote Respiratory Monitoring: A Study on Indonesian Subject
This addresses the problem of uncomfortable or costly respiratory monitoring for healthcare applications, but it is incremental as it builds on existing pixel intensity and tracking methods.
The study tackled remote respiratory monitoring by proposing a non-contact method using Pixel Intensity Changes with RGB camera images, achieving a mean absolute error of 0.85 and root mean square error of 1.49 in static conditions and 0.81 MAE and 1.35 RMSE in dynamic conditions on Indonesian subjects.
Respiratory rate is a vital sign indicating various health conditions. Traditional contact-based measurement methods are often uncomfortable, and alternatives like respiratory belts and smartwatches have limitations in cost and operability. Therefore, a non-contact method based on Pixel Intensity Changes (PIC) with RGB camera images is proposed. Experiments involved 3 sizes of bounding boxes, 3 filter options (Laplacian, Sobel, and no filter), and 2 corner detection algorithms (ShiTomasi and Harris), with tracking using the Lukas-Kanade algorithm. Eighteen configurations were tested on 67 subjects in static and dynamic conditions. The best results in static conditions were achieved with the Medium Bounding box, Sobel Filter, and Harris Method (MAE: 0.85, RMSE: 1.49). In dynamic conditions, the Large Bounding box with no filter and ShiTomasi, and Medium Bounding box with no filter and Harris, produced the lowest MAE (0.81) and RMSE (1.35)