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Deep Learning With Anatomical Priors: Imitating Enhanced Autoencoders In Latent Space For Improved Pelvic Bone Segmentation In MRI

机译:带有解剖学先验的深度学习:在潜在空间中模仿增强型自动编码器,以改善MRI的骨盆骨分割

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We propose a 2D Encoder-Decoder based deep learning architecture for semantic segmentation, that incorporates anatomical priors by imitating the encoder component of an autoencoder in latent space. The autoencoder is additionally enhanced by means of hierarchical features, extracted by an UNet module. Our suggested architecture is trained in an end-to-end manner and is evaluated on the example of pelvic bone segmentation in MRI. A comparison to the standard U-Net architecture shows promising improvements.
机译:我们提出了一种用于语义分割的基于2D编码器-解码器的深度学习体系结构,该体系结构通过模仿潜在空间中自动编码器的编码器组件而结合了解剖学先验。自动编码器还通过UNet模块提取的分层功能进行了增强。我们建议的体系结构以端到端的方式进行了培训,并以MRI中的骨盆骨分割为例进行了评估。与标准U-Net架构的比较显示出可喜的改进。

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