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Automatic Segmentation of Glottal Space from Video Images Based on Mathematical Morphology and the hough Transform

机译:基于数学形态学和霍夫变换的视频图像声门空间自动分割

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Vocal disorders directly arise from the physical shape of the vocal cords. Videostroboscopic imaging provides doctors with valuable information about the physical shape of the vocal cords and about the way these cords move. Segmentation of the glottal space is necessary in order to characterize morphological disorders of vocal folds. One of the main problems with the methods presented is their low level of accuracy. To solve this problem, an automatic method based on Mathematical Morphology edge detection and the Hough transformation is presented in this article to extract the glottal space from the videostroboscopic images presented. This method and two other popular algorithms, histogram and active contour, are performed on 10 sets of videostroboscopy data from excised larynx experiments to compare their performances in analyzing videostroboscopy images. The accuracy in computing glottal area of these methods are investigated. The results show that our proposed method provides the most accurate and efficient detection, and is applicable when processing low-resolution images. In this paper we used edge detection based on geometric morphology to detecting the edges of vocal cords. Then in the next step the edges that were extracted, using Hough transform change to some lines. After that through using proposed algorithm, we omit the extra lines and extract the glottis.
机译:声带障碍直接源于声带的物理形状。频闪光谱成像为医生提供了有关声带的物理形状以及这些声带移动方式的有价值的信息。为了表征声带的形态障碍,必须对声门空间进行分割。提出的方法的主要问题之一是其准确性低。为了解决这个问题,本文提出了一种基于数学形态学边缘检测和霍夫变换的自动方法,从呈现的视频频闪图像中提取声门空间。该方法和其他两种流行的算法(直方图和活动轮廓)在来自切除的喉部实验的10组视频频闪观测数据上执行,以比较它们在分析视频频闪观测图像中的性能。研究了这些方法在声门面积计算中的准确性。结果表明,我们提出的方法提供了最准确,最有效的检测方法,适用于处理低分辨率图像。在本文中,我们使用基于几何形态学的边缘检测来检测声带的边缘。然后,在下一步中,使用霍夫变换将提取的边缘更改为某些线。之后,通过使用提出的算法,我们省略了多余的线条并提取了声门。

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