Book Chapter10.1007/978-3-642-22092-0_52
Automatic part selection for groupwise registration
Pei Zhang,Timothy F. Cootes +1 more
- 03 Jul 2011
- Vol. 22, pp 636-647
14
TL;DR: This paper presents a more sophisticated method that uses the sparse matches of a parts+geometry model as the initialisation and shows that dense mesh models constructed during the groupwise registration process can be used to accurately annotate new images.
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Abstract: Groupwise non-rigid image registration plays an important role in medical image analysis. As local optimisation is largely used in such techniques, a good initialisation is required to avoid local minima. Although the traditional approach to initialisation--affine transformation--generally works well, recent studies have shown that it is inadequate when registering images of complex structures. In this paper we present a more sophisticated method that uses the sparse matches of a parts+geometry model as the initialisation. The choice of parts is made by a voting scheme. We generate a large number of candidate parts, randomly construct many different parts+geometry models and then use the models to select the parts with good localisability. We show that the algorithm can achieve better results than the state of the art on three different datasets of increasing difficulty. We also show that dense mesh models constructed during the groupwise registration process can be used to accurately annotate new images.
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Citations
•Journal Article
Weakly Supervised Learning of Part-Based Spatial Models for Visual Object Recognition
TL;DR: In this paper, a weakly supervised approach is proposed to learn both a model of local part appearance and a model for the spatial relations between those parts, and the results show that the effect on performance depends substantially on the particular object class and on the difficulty of the test dataset.
190
DICCCOL: Dense Individualized and Common Connectivity-Based Cortical Landmarks
Dajiang Zhu,Kaiming Li,Kaiming Li,Lei Guo,Xi Jiang,Tuo Zhang,Tuo Zhang,Degang Zhang,Hanbo Chen,Fan Deng,Carlos C Faraco,Changfeng Jin,Chong Yaw Wee,Yixuan Yuan,Peili Lv,Yan Yin,Xiaolei Hu,Lian Duan,Xintao Hu,Junwei Han,Lihong Wang,Dinggang Shen,L. Stephen Miller,Lingjiang Li,Tianming Liu +24 more
TL;DR: This work reports a dense and consistent map of 358 cortical landmarks, named Dense Individualized and Common Connectivity-based Cortical Landmarks (DICCCOLs), defined by group-wise consistent white-matter fiber connection patterns derived from diffusion tensor imaging data.
Survey of encoding and decoding of visual stimulus via FMRI: an image analysis perspective
TL;DR: This paper focuses on the survey of the variety of image analysis methodologies, such as neuroimage registration, fMRI signal analysis, ROI selection, machine learning algorithms, reproducibility analysis, structural and functional connectivity, and natural image analysis, which were employed in previous brain encoding/decoding research works.
48
Automatic Construction of Parts+Geometry Models for Initializing Groupwise Registration
Pei Zhang,Timothy F. Cootes +1 more
TL;DR: It is shown that both the model and its matches can be automatically obtained, and that the matches are able to effectively initialize a groupwise nonrigid registration algorithm, leading to accurate dense correspondences.
32
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