2022
DOI: 10.48550/arxiv.2206.14413
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The Lighter The Better: Rethinking Transformers in Medical Image Segmentation Through Adaptive Pruning

Abstract: Vision transformers have recently set off a new wave in the field of medical image analysis due to their remarkable performance on various computer vision tasks. However, recent hybrid-/transformer-based approaches mainly focus on the benefits of transformers in capturing long-range dependency while ignoring the issues of their daunting computational complexity, high training costs, and redundant dependency. In this paper, we propose to employ adaptive pruning to transformers for medical image segmentation and… Show more

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“…Now, we will discuss the comparisons with the four datasets. The quantitative results of existing methods are reported by Lin et al (2022); Wu et al (2022); Reza et al (2022) (Table 4). Our method achieves the highest scores in all metrics except SE with a slight decrease.…”
Section: Figurementioning
confidence: 99%
“…Now, we will discuss the comparisons with the four datasets. The quantitative results of existing methods are reported by Lin et al (2022); Wu et al (2022); Reza et al (2022) (Table 4). Our method achieves the highest scores in all metrics except SE with a slight decrease.…”
Section: Figurementioning
confidence: 99%