Saved in:
Bibliographic Details
Main Authors: Guan, Qiu, Pan, Mengjie, Chen, Feng, Yang, Zhiqiang, Yu, Zhongwen, Zhou, Qianwei, Hu, Haigen
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.00694
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917766048514048
author Guan, Qiu
Pan, Mengjie
Chen, Feng
Yang, Zhiqiang
Yu, Zhongwen
Zhou, Qianwei
Hu, Haigen
author_facet Guan, Qiu
Pan, Mengjie
Chen, Feng
Yang, Zhiqiang
Yu, Zhongwen
Zhou, Qianwei
Hu, Haigen
contents Effective lesion detection in medical image is not only rely on the features of lesion region,but also deeply relative to the surrounding information.However,most current methods have not fully utilize it.What is more,multi-scale feature fusion mechanism of most traditional detectors are unable to transmit detail information without loss,which makes it hard to detect small and boundary ambiguous lesion in early stage disease.To address the above issues,we propose a novel intra- and across-layer feature interaction FCOS model (IAFI-FCOS) with a multi-scale feature fusion mechanism ICAF-FPN,which is a network structure with intra-layer context augmentation (ICA) block and across-layer feature weighting (AFW) block.Therefore,the traditional FCOS detector is optimized by enriching the feature representation from two perspectives.Specifically,the ICA block utilizes dilated attention to augment the context information in order to capture long-range dependencies between the lesion region and the surrounding.The AFW block utilizes dual-axis attention mechanism and weighting operation to obtain the efficient across-layer interaction features,enhancing the representation of detailed features.Our approach has been extensively experimented on both the private pancreatic lesion dataset and the public DeepLesion dataset,our model achieves SOTA results on the pancreatic lesion dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2409_00694
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle IAFI-FCOS: Intra- and across-layer feature interaction FCOS model for lesion detection of CT images
Guan, Qiu
Pan, Mengjie
Chen, Feng
Yang, Zhiqiang
Yu, Zhongwen
Zhou, Qianwei
Hu, Haigen
Computer Vision and Pattern Recognition
Effective lesion detection in medical image is not only rely on the features of lesion region,but also deeply relative to the surrounding information.However,most current methods have not fully utilize it.What is more,multi-scale feature fusion mechanism of most traditional detectors are unable to transmit detail information without loss,which makes it hard to detect small and boundary ambiguous lesion in early stage disease.To address the above issues,we propose a novel intra- and across-layer feature interaction FCOS model (IAFI-FCOS) with a multi-scale feature fusion mechanism ICAF-FPN,which is a network structure with intra-layer context augmentation (ICA) block and across-layer feature weighting (AFW) block.Therefore,the traditional FCOS detector is optimized by enriching the feature representation from two perspectives.Specifically,the ICA block utilizes dilated attention to augment the context information in order to capture long-range dependencies between the lesion region and the surrounding.The AFW block utilizes dual-axis attention mechanism and weighting operation to obtain the efficient across-layer interaction features,enhancing the representation of detailed features.Our approach has been extensively experimented on both the private pancreatic lesion dataset and the public DeepLesion dataset,our model achieves SOTA results on the pancreatic lesion dataset.
title IAFI-FCOS: Intra- and across-layer feature interaction FCOS model for lesion detection of CT images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2409.00694