A GMM Based Algorithm To Generate Point-Cloud And Its Application To Neuroimaging

Liu Yang, Rudrasis Chakraborty
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引用次数: 3

Abstract

Recent years have witnessed the emergence of 3D medical imaging techniques with the development of 3D sensors and technology. Due to the presence of noise in image acquisition, registration is a must, yet incur error which propagates to the subsequent analysis. An alternative way to analyze medical imaging is by understanding the 3D shapes represented in terms of point-cloud. Though in the medical imaging community, 3D point-cloud is not a “go-to” choice, it is a “natural” way to capture 3D shapes. Another hurdle presented in applying deep learning techniques to medical imaging is the lack of samples. A way to overcome this limitation is by generating samples using GAN like schemes. However, due to different modality in medical images, standard generative models can not be applied directly. In this work, we use the advantage of the 3D point-cloud representation of medical images and propose a Gaussian mixture model based generation and interpolation scheme. For interpolation, given two 3D structures represented as point-clouds, we can generate point-clouds in between, and the experimental validation shows the goodness of the interpolated samples. We also generate new point-clouds for subjects with and without dementia and show that the generated samples are indeed closely matched to the respective training samples from the same class.
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基于GMM的点云生成算法及其在神经影像学中的应用
随着三维传感器和技术的发展,近年来出现了三维医学成像技术。由于图像采集中存在噪声,配准是必须的,但会产生误差,并传播到后续的分析中。分析医学影像的另一种方法是理解用点云表示的三维形状。虽然在医学成像社区,3D点云不是一个“首选”的选择,它是一个“自然”的方式来捕捉3D形状。将深度学习技术应用于医学成像的另一个障碍是缺乏样本。克服这一限制的一种方法是使用类似GAN的方案生成样本。然而,由于医学图像的模态不同,不能直接应用标准生成模型。在这项工作中,我们利用医学图像三维点云表示的优势,提出了一种基于高斯混合模型的生成和插值方案。在插值方面,给定两个以点云表示的三维结构,我们可以在两者之间生成点云,实验验证了插值样本的良好性。我们还为患有和不患有痴呆症的受试者生成了新的点云,并表明生成的样本确实与来自同一类的各自训练样本紧密匹配。
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