Analysis of respiratory sounds increases its importance every day. Many different methods are available in the analysis, and new techniques are continuing to be developed to further improve these methods. Features are extracted from audio signals and trained using different machine learning techniques. The use of deep learning, which is a different method and has increased in recent years, also shows its influence in this field. Deep learning techniques applied to the image of audio signals give good results and continue to be developed. In this study, image filters were applied to the values obtained from audio signals and the results of the features formed from this were examined in machine learning and deep learning techniques. Their results were compared with the results of methods that had previously achieved good results.
翻译:对呼吸道声音的分析每天都会增加其重要性。在分析中可以找到许多不同的方法,并且正在继续开发新的技术来进一步改进这些方法。从音频信号中提取特征,并利用不同的机器学习技术进行训练;使用深层次学习,这是一种不同的方法,近年来有所增加,也显示了其在这一领域的影响。运用于音频信号图像的深层次学习技术产生了良好的效果,并且正在继续开发。在这项研究中,图像过滤应用了从音频信号中获得的价值以及由此形成的特征的结果,在机器学习和深层次学习技术中进行了检查,其结果与以前取得良好结果的方法的结果进行了比较。