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Multi-view analysis of unregistered medical images using cross-view transformers
by
Gijs van Tulder
, Marchiori, Elena
, Yao, Tong
in
Datasets
/ Feature maps
/ Image analysis
/ Medical imaging
/ Misalignment
/ Transformers
2021
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Multi-view analysis of unregistered medical images using cross-view transformers
by
Gijs van Tulder
, Marchiori, Elena
, Yao, Tong
in
Datasets
/ Feature maps
/ Image analysis
/ Medical imaging
/ Misalignment
/ Transformers
2021
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Multi-view analysis of unregistered medical images using cross-view transformers
Paper
Multi-view analysis of unregistered medical images using cross-view transformers
2021
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Overview
Multi-view medical image analysis often depends on the combination of information from multiple views. However, differences in perspective or other forms of misalignment can make it difficult to combine views effectively, as registration is not always possible. Without registration, views can only be combined at a global feature level, by joining feature vectors after global pooling. We present a novel cross-view transformer method to transfer information between unregistered views at the level of spatial feature maps. We demonstrate this method on multi-view mammography and chest X-ray datasets. On both datasets, we find that a cross-view transformer that links spatial feature maps can outperform a baseline model that joins feature vectors after global pooling.
Publisher
Cornell University Library, arXiv.org
Subject
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