High spatiotemporal cineMRI films using compressed sensing for acquiring articulatory data

Benjamin Elie, Y. Laprie, P. Vuissoz, F. Odille
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引用次数: 9

Abstract

The paper presents a method to acquire articulatory data from a sequence of MRI images at a high framerate. The acquisition rate is enhanced by partially collecting data in the kt-space. The combination of compressed sensing technique, along with homodyne reconstruction, enables the missing data to be recovered. The good reconstruction is guaranteed by an appropriate design of the sampling pattern. It is based on a pseudo-random Cartesian scheme, where each line is partially acquired for use of the homodyne reconstruction, and where the lines are pseudo-randomly sampled: central lines are constantly acquired and the sampling density decreases as the lines are far from the center. Application on real speech data show that the framework enables dynamic sequences of vocal tract images to be recovered at a framerate higher than 30 frames per second and with a spatial resolution of 1 mm. A method to extract articulatory data from contour identification is presented. It is intended, in fine, to be used for the creation of a large database of articulatory data.
使用压缩感知获取发音数据的高时空cineMRI电影
本文提出了一种从高帧率的MRI图像序列中获取关节数据的方法。通过在kt空间中部分采集数据,提高了采集率。压缩传感技术与同差重建技术相结合,使丢失的数据得以恢复。适当的采样模式设计保证了良好的重构效果。它基于伪随机笛卡尔格式,其中每条线都是部分获取的,用于同差重建,其中的线是伪随机采样的:中心线是不断获取的,随着线远离中心,采样密度降低。在实际语音数据上的应用表明,该框架能够以高于30帧/秒的帧率和1mm的空间分辨率恢复声道图像的动态序列。提出了一种从轮廓识别中提取发音数据的方法。总之,它的目的是用于创建发音数据的大型数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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