Goal: The evaluation of respiratory events using audio sensing in an at-home setting can be indicative of worsening health conditions. This paper investigates the use of image-based transfer learning applied to five audio visualizations to evaluate three classification tasks (C1: wet vs. dry vs. whooping cough vs. restricted breathing; C2: wet vs. dry cough; C3: cough vs. restricted breathing). Methods: The five visualizations (linear spectrogram, logarithmic spectrogram, Mel-spectrogram, wavelet scalograms, and aggregate images) are applied to a pre-trained AlexNet image classifier for all tasks. Results: The aggregate image-based classifier achieved the highest overall performance across all tasks with C1, C2, and C3 having testing accuracies of 0.88, 0.88, and 0.91 respectively. However, the Mel-spectrogram method had the highest testing accuracy (0.94) for C2. Conclusions: The classification of respiratory events using aggregate image inputs to transfer learning approaches may help healthcare professionals by providing information that would otherwise be unavailable to them.
CITATION STYLE
Cohen-Mcfarlane, M., Xi, P., Wallace, B., Habashy, K., Huq, S., Goubran, R., & Knoefel, F. (2022). Evaluation of Respiratory Sounds Using Image-Based Approaches for Health Measurement Applications. IEEE Open Journal of Engineering in Medicine and Biology, 3, 134–141. https://doi.org/10.1109/OJEMB.2022.3202435
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