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A Convolutional Autoencoder Approach To Learn Volumetric Shape Representations For Brain Structures

机译:一种学习脑结构体积形式表示的卷积式自动化方法

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We propose a novel machine learning strategy for studying neuroanatomical shape variation. Our model works with volumetric binary segmentation images, and requires no pre-processing such as the extraction of surface points or a mesh. The learned shape descriptor is invariant to affine transformations, including shifts, rotations and scaling. Thanks to the adopted autoencoder framework, inter-subject differences are automatically enhanced in the learned representation, while intra-subject variances are minimized. Our experimental results on a shape retrieval task showed that the proposed representation outperforms a state-of-the-art benchmark for brain structures extracted from MRI scans.
机译:我们提出了一种用于研究神经杀菌形状变异的新型机器学习策略。我们的模型适用于体积二进制分割图像,并且不需要预处理,例如表面点的提取或网格。学习的形状描述符不变于归属变换,包括换档,旋转和缩放。由于采用的AutoEncoder框架,在学习的表示中自动增强了对象间差异,而主题差异最小化。我们对形状检索任务的实验结果表明,所提出的代表优于从MRI扫描提取的脑结构的最先进的基准。

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