학술논문

Classification of Respiratory Sounds by Generated Image and Improved CRNN
Document Type
Conference
Source
제어로봇시스템학회 국제학술대회 논문집. 2021-10 2021(10):1804-1808
Subject
Classification of Respiratory Sounds
Computer Aided Diagnosis
Time-Frequency Analysis
Convolutional Recurrent Neural Network
Language
Korean
ISSN
2005-4750
Abstract
The death toll from respiratory illness reached nearly 8 million in 2019. Auscultation is used to diagnose for respiratory illness. Highly accurate diagnosis is required to reduce the number of deaths. However, unlike diagnostic imaging, auscultation of respiratory sounds could not visualize the diagnostic results. In addition, since there is a problem that the experience of a doctor affects the diagnosis results, it is required to develop a diagnostic system for quantitative analysis. In recent years, the development of a diagnostic system using the ICBHI 2017 Challenge Respiratory Sound Database has been carried out in the field of respiratory sound analysis. However, the proposed system still has accuracy problems. Therefore, in this study, we improve the proposed method by classifying the improved CRNN (Convolutional Recurrent Neural Network) by inputting multiple respiratory sound images. As a result, Sensitivity: 0.64, Specificity: 0.83, Average Score: 0.74, Harmonic Score: 0.72 were obtained, and excellent results were achieved compared with other methods.

Online Access