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DOI: 10.1160/ME9046
Intensity Gradient Based Registration and Fusion of Multi-modal Images
Publication History
Publication Date:
20 January 2018 (online)
Summary
Objectives: A particular problem in image registration arises for multi-modal images taken from different imaging devices and/or modalities. Starting in 1995, mutual information has shown to be a very successful distance measure for multi-modal image registration. Therefore, mutual information is considered to be the state-of-the-art approach to multi-modal image registration. However, mutual information has also a number of well-known drawbacks. Its main disadvantage is that it is known to be highly non-convexand hastypicallymanylocal maxima.
Methods: This observation motivates us to seek a different image similarity measure which is better suited for optimization but as well capable to handle multimodal images.
Results: In this work, we investigate an alternative distance measure which is based on normalized gradients.
Conclusions: As we show, the alternative approach is deterministic, much simpler, easier to interpret, fast and straightforward to implement, faster to compute, and also much more suitable to numerical optimization.
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