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Deep is a Luxury We Don't Have

Authors :
Taha, Ahmed
Vu, Yen Nhi Truong
Mombourquette, Brent
Matthews, Thomas Paul
Su, Jason
Singh, Sadanand
Publication Year :
2022

Abstract

Medical images come in high resolutions. A high resolution is vital for finding malignant tissues at an early stage. Yet, this resolution presents a challenge in terms of modeling long range dependencies. Shallow transformers eliminate this problem, but they suffer from quadratic complexity. In this paper, we tackle this complexity by leveraging a linear self-attention approximation. Through this approximation, we propose an efficient vision model called HCT that stands for High resolution Convolutional Transformer. HCT brings transformers' merits to high resolution images at a significantly lower cost. We evaluate HCT using a high resolution mammography dataset. HCT is significantly superior to its CNN counterpart. Furthermore, we demonstrate HCT's fitness for medical images by evaluating its effective receptive field.Code available at https://bit.ly/3ykBhhf<br />Comment: MICCAI 2022 + Extra Experiments

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2208.06066
Document Type :
Working Paper