CVAILGFeb 16

VariViT: A Vision Transformer for Variable Image Sizes

arXiv:2602.14615v12 citationsh-index: 69Has CodeMIDL
Originality Incremental advance
AI Analysis

This addresses a domain-specific problem in medical imaging by enabling variable-sized crops for irregular structures like tumors, though it is incremental as it builds on existing ViT architectures.

The paper tackled the problem of Vision Transformers requiring fixed-size images, which is challenging in medical imaging due to variable structures, by proposing VariViT to handle variable image sizes with consistent patch sizes, achieving F1-scores of 75.5% and 76.3% on glioma genotype prediction and brain tumor classification tasks.

Vision Transformers (ViTs) have emerged as the state-of-the-art architecture in representation learning, leveraging self-attention mechanisms to excel in various tasks. ViTs split images into fixed-size patches, constraining them to a predefined size and necessitating pre-processing steps like resizing, padding, or cropping. This poses challenges in medical imaging, particularly with irregularly shaped structures like tumors. A fixed bounding box crop size produces input images with highly variable foreground-to-background ratios. Resizing medical images can degrade information and introduce artefacts, impacting diagnosis. Hence, tailoring variable-sized crops to regions of interest can enhance feature representation capabilities. Moreover, large images are computationally expensive, and smaller sizes risk information loss, presenting a computation-accuracy tradeoff. We propose VariViT, an improved ViT model crafted to handle variable image sizes while maintaining a consistent patch size. VariViT employs a novel positional embedding resizing scheme for a variable number of patches. We also implement a new batching strategy within VariViT to reduce computational complexity, resulting in faster training and inference times. In our evaluations on two 3D brain MRI datasets, VariViT surpasses vanilla ViTs and ResNet in glioma genotype prediction and brain tumor classification. It achieves F1-scores of 75.5% and 76.3%, respectively, learning more discriminative features. Our proposed batching strategy reduces computation time by up to 30% compared to conventional architectures. These findings underscore the efficacy of VariViT in image representation learning. Our code can be found here: https://github.com/Aswathi-Varma/varivit

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