TL;DR
This paper investigates how intensity variations affect deep learning-based brain image registration and proposes a structural similarity-based loss to improve robustness across different intensity distributions.
Contribution
It introduces a structural similarity-based loss function to enhance deep neural network performance under intensity heterogeneity in brain image registration.
Findings
Deep learning models degrade with intensity variation in input images.
Structural similarity-based loss improves registration accuracy across datasets.
Proposed method outperforms traditional approaches in handling intensity heterogeneity.
Abstract
Image registration is a widely-used technique in analysing large scale datasets that are captured through various imaging modalities and techniques in biomedical imaging such as MRI, X-Rays, etc. These datasets are typically collected from various sites and under different imaging protocols using a variety of scanners. Such heterogeneity in the data collection process causes inhomogeneity or variation in intensity (brightness) and noise distribution. These variations play a detrimental role in the performance of image registration, segmentation and detection algorithms. Classical image registration methods are computationally expensive but are able to handle these artifacts relatively better. However, deep learning-based techniques are shown to be computationally efficient for automated brain registration but are sensitive to the intensity variations. In this study, we investigate the…
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