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Bibliographic Details
Main Authors: Kazi, Nur Mohammad, Khaled, Ibteshum, Galib, Md. Luthful Hasan, Shihab, Ali Faruk, Islam, Md. Rakibul
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.17439
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Table of Contents:
  • Recently computer vision has seen advancements mainly thanks to Transformer-based models. However many non-Transformer methods are still doing well being a direct competition of Transformer-based models. This review tries to present a comprehensive taxonomy of such methods and organize these methods into categories like convolution-based models, MLP-based models, state-space-based and more. These methods are looked at in terms of how efficient they are, how well they scale, how easy they are to understand and how robust they are. A total of 40 papers were chosen for this study. The goal is to give a view of non-Transformer methods and find out what challenges and opportunities exist for future computer vision research.