Automatic Voice Pathology Monitoring Using Parallel Deep Models for Smart Healthcare

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Abstract

Recent advancements in wireless communication and machine learning technologies aid in the development of an accurate and affordable healthcare facility. In this paper, we propose a smart healthcare framework in a mobile platform using deep learning. In the framework, a smartphone records a voice signal of a client and sends it to a cloud server. The cloud server processes the signal and classifies it as normal or pathological using a parallel convolutional neural network model. The decision on the signal is then transferred to the doctor for a prescription. Two publicly available databases were used in the experiments, where voice samples were played in front of a smartphone. The experimental results show the suitability of the proposed framework in the healthcare framework.

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APA

Alhussein, M., & Muhammad, G. (2019). Automatic Voice Pathology Monitoring Using Parallel Deep Models for Smart Healthcare. IEEE Access, 7, 46474–46479. https://doi.org/10.1109/ACCESS.2019.2905597

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