基于声学的周期性运动物体图像自动分割方法:声带边缘检测案例研究

Bartosz Kopczynski, P. Strumiłło, Marcin Just, E. Niebudek-Bogusz
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引用次数: 3

摘要

我们描述了一种新的图像分割技术,用于自动检测产生声波的周期性运动物体。该方法是基于测量两个独立采集但时间同步的数据,即音频信号和图像序列的相似度。这种技术使描绘振荡对象的图像序列的自动和优化分割过程成为可能。本文提出的分割方法在振动声带边缘检测问题上得到了验证。采用时频分析的方法,对同步采集的喉镜图像序列与语音信号进行相似性度量。所开发的分割技术和运动分析方法可用于早期发现可能导致声音嘶哑的声带振荡异常,也称为发声障碍。特别是,图像分割结果可以帮助语音学家分析声带发声过程,有助于早期发现语音异常。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Acoustic Based Method for Automatic Segmentation of Images of Objects in Periodic Motion: detection of vocal folds edges case study
We describe a novel image segmentation technique for automated detection of objects being in periodic motion that generates acoustic waves. The method is based on measuring similarity of two independently collected but time synchronized data, i.e. the audio signals and image sequences. Such a technique enables automatic and optimized segmentation procedure of a sequence of images depicting an oscillating object. The proposed segmentation procedure has been validated on the problem of detecting edges of vibrating vocal folds. The similarity measure of the synchronously collected sequence of laryngoscopic images and the voice signal is achieved by applying time-frequency analysis. The developed segmentation technique and motion analysis method can be applied for early detection of oscillation anomalies of the vocal folds which may cause hoarse voice, also known as dysphonia. In particular, the image segmentation result can aid the phoniatrist in the analysis of the vocal folds phonation process and help in early detection of voice anomalies.
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