Ireland David, Knuepffer Christina, McBride Simon J
Computational Informatics, Australian e-Health Research Centre, CSIRO , Brisbane, QLD , Australia.
Asia-Pacific Centre for Neuromodulation, UQ Centre for Clinical Research, University of Queensland , Brisbane, QLD , Australia ; School of Information Technology and Electrical Engineering, University of Queensland , Brisbane, QLD , Australia.
Front Bioeng Biotechnol. 2015 Aug 20;3:118. doi: 10.3389/fbioe.2015.00118. eCollection 2015.
Signal processing on digitally sampled vowel sounds for the detection of pathological voices has been firmly established. This work examines compression artifacts on vowel speech samples that have been compressed using the adaptive multi-rate codec at various bit-rates. Whereas previous work has used the sensitivity of machine learning algorithm to test for accuracy, this work examines the changes in the extracted speech features themselves and thus report new findings on the usefulness of a particular feature. We believe this work will have potential impact for future research on remote monitoring as the identification and exclusion of an ill-defined speech feature that has been hitherto used, will ultimately increase the robustness of the system.
用于检测病理性嗓音的数字采样元音语音信号处理技术已经得到了稳固确立。这项工作研究了使用自适应多速率编解码器在不同比特率下对元音语音样本进行压缩时产生的压缩伪像。以往的工作利用机器学习算法的敏感性来测试准确性,而这项工作研究提取的语音特征本身的变化,从而报告关于特定特征有用性的新发现。我们相信这项工作将对未来的远程监测研究产生潜在影响,因为识别和排除迄今使用的定义不明确的语音特征最终将提高系统的鲁棒性。