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Main Authors: Wang, Jun, Bhalerao, Abhir, Yin, Terry, See, Simon, He, Yulan
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2211.01412
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author Wang, Jun
Bhalerao, Abhir
Yin, Terry
See, Simon
He, Yulan
author_facet Wang, Jun
Bhalerao, Abhir
Yin, Terry
See, Simon
He, Yulan
contents Radiology report generation (RRG) has gained increasing research attention because of its huge potential to mitigate medical resource shortages and aid the process of disease decision making by radiologists. Recent advancements in RRG are largely driven by improving a model's capabilities in encoding single-modal feature representations, while few studies explicitly explore the cross-modal alignment between image regions and words. Radiologists typically focus first on abnormal image regions before composing the corresponding text descriptions, thus cross-modal alignment is of great importance to learn a RRG model which is aware of abnormalities in the image. Motivated by this, we propose a Class Activation Map guided Attention Network (CAMANet) which explicitly promotes crossmodal alignment by employing aggregated class activation maps to supervise cross-modal attention learning, and simultaneously enrich the discriminative information. CAMANet contains three complementary modules: a Visual Discriminative Map Generation module to generate the importance/contribution of each visual token; Visual Discriminative Map Assisted Encoder to learn the discriminative representation and enrich the discriminative information; and a Visual Textual Attention Consistency module to ensure the attention consistency between the visual and textual tokens, to achieve the cross-modal alignment. Experimental results demonstrate that CAMANet outperforms previous SOTA methods on two commonly used RRG benchmarks.
format Preprint
id arxiv_https___arxiv_org_abs_2211_01412
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle CAMANet: Class Activation Map Guided Attention Network for Radiology Report Generation
Wang, Jun
Bhalerao, Abhir
Yin, Terry
See, Simon
He, Yulan
Computer Vision and Pattern Recognition
Radiology report generation (RRG) has gained increasing research attention because of its huge potential to mitigate medical resource shortages and aid the process of disease decision making by radiologists. Recent advancements in RRG are largely driven by improving a model's capabilities in encoding single-modal feature representations, while few studies explicitly explore the cross-modal alignment between image regions and words. Radiologists typically focus first on abnormal image regions before composing the corresponding text descriptions, thus cross-modal alignment is of great importance to learn a RRG model which is aware of abnormalities in the image. Motivated by this, we propose a Class Activation Map guided Attention Network (CAMANet) which explicitly promotes crossmodal alignment by employing aggregated class activation maps to supervise cross-modal attention learning, and simultaneously enrich the discriminative information. CAMANet contains three complementary modules: a Visual Discriminative Map Generation module to generate the importance/contribution of each visual token; Visual Discriminative Map Assisted Encoder to learn the discriminative representation and enrich the discriminative information; and a Visual Textual Attention Consistency module to ensure the attention consistency between the visual and textual tokens, to achieve the cross-modal alignment. Experimental results demonstrate that CAMANet outperforms previous SOTA methods on two commonly used RRG benchmarks.
title CAMANet: Class Activation Map Guided Attention Network for Radiology Report Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2211.01412