Beyond Grids: Exploring Elastic Input Sampling for Vision Transformers
Vision transformers have excelled in various computer vision tasks but mostly rely on rigid input sampling using a fixed-size grid of patches. It limits their applicability in real-world problems, such as active visual exploration, where patches have various scales and positions. Our paper addresses...
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Zusammenfassung: | Vision transformers have excelled in various computer vision tasks but mostly
rely on rigid input sampling using a fixed-size grid of patches. It limits
their applicability in real-world problems, such as active visual exploration,
where patches have various scales and positions. Our paper addresses this
limitation by formalizing the concept of input elasticity for vision
transformers and introducing an evaluation protocol for measuring this
elasticity. Moreover, we propose modifications to the transformer architecture
and training regime, which increase its elasticity. Through extensive
experimentation, we spotlight opportunities and challenges associated with such
architecture. |
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DOI: | 10.48550/arxiv.2309.13353 |