3D Reconstruction in Canonical Co-ordinate Space from Arbitrarily Oriented 2D Images

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Title: 3D Reconstruction in Canonical Co-ordinate Space from Arbitrarily Oriented 2D Images
Author(s): Hou, B
Khanal, B
Alansary, A
McDonagh, S
Davidson, A
Rutherford, M
Hajnal, JV
Rueckert, D
Glocker, B
Kainz, B
Item Type: Working Paper
Abstract: Limited capture range and the requirement to provide high quality initializations for optimization-based 2D/3D image registration methods can significantly degrade the per- formance of 3D image reconstruction and motion compensation pipelines. Challenging clinical imaging scenarios, that contain sig- nificant subject motion such as fetal in-utero imaging, complicate the 3D image and volume reconstruction process. In this paper we present a learning based image registra- tion method capable of predicting 3D rigid transformations of arbitrarily oriented 2D image slices, with respect to a learned canonical atlas co-ordinate system. Only image slice intensity information is used to perform registration and canonical align- ment, no spatial transform initialization is required. To find image transformations we utilize a Convolutional Neural Network (CNN) architecture to learn the regression function capable of mapping 2D image slices to the 3D canonical atlas space. We extensively evaluate the effectiveness of our approach quantitatively on simulated Magnetic Resonance Imaging (MRI), fetal brain imagery with synthetic motion and further demon- strate qualitative results on real fetal MRI data where our method is integrated into a full reconstruction and motion compensation pipeline. Our learning based registration achieves an average spatial prediction error of 7 mm on simulated data and produces qualitatively improved reconstructions for heavily moving fetuses with gestational ages of approximately 20 weeks. Our model provides a general and computationally efficient solution to the 2D-3D registration initialization problem and is suitable for real- time scenarios.
URI: http://hdl.handle.net/10044/1/54081
Is Replaced By: 10044/1/56337
http://hdl.handle.net/10044/1/56337
Copyright Statement: © 2017 The Author(s)
Keywords: cs.CV
cs.CV
Appears in Collections:Faculty of Engineering
Computing



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