Measurement of Tongue Motion using Optical Flows on Segmented Areas

Worapan Kusakunniran, Kittinun Aukkapinyo, Punyanuch Borwarnginn, Thanandon Imaromkul, Kittikhun Thongkanchorn, Disathon Wattanadhirach, Sophon Mongkolluksamee, Ratchainant Thammasudjarit, P. Ritthipravat, Pimchanok Tuakta, Paitoon Benjapornlert
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Abstract

A trajectory of the tongue has several benefits in various domains such as articulatory and medical. It allows a user to analyze human speech or diagnose anomaly tongue movement of patients. This research focuses on estimating tongue motion. Most existing solutions apply traditional image processing techniques to a sequence of images to compute motion. Although they can precisely estimate a tongue motion, there are drawbacks to practicality and scalability. It is because of the high cost of medical imaging devices such as magnetic resonance imaging (MRI) and ultrasound scanners. There is also overhead in the preparation of marking on the face of the patient. On the other hand, the optical How algorithm can produce motion vectors on videos obtained from a commercial camera. This paper proposes a solution that can estimate tongue motion with more praetieality and less overhead. An average motion vector can be precisely computed within a region of interest of a tongne.
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利用分割区域的光流测量舌部运动
舌头的轨迹在发音和医学等各个领域都有很多好处。它允许用户分析人类语言或诊断异常的舌头运动的病人。本研究的重点是舌头运动的估计。大多数现有的解决方案将传统的图像处理技术应用于一系列图像来计算运动。虽然它们可以精确地估计舌头的运动,但在实用性和可扩展性方面存在缺陷。这是因为磁共振成像(MRI)和超声扫描仪等医疗成像设备的成本很高。在病人脸上做标记的准备工作也有开销。另一方面,光学How算法可以对从商用摄像机获得的视频产生运动矢量。本文提出了一种更准确、开销更小的舌动估计方法。平均运动矢量可以精确地计算在一个感兴趣的区域内的舌。
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