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Autores principales: Yu, Zhongwen, Guan, Qiu, Yang, Jianmin, Yang, Zhiqiang, Zhou, Qianwei, Chen, Yang, Chen, Feng
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2408.14087
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author Yu, Zhongwen
Guan, Qiu
Yang, Jianmin
Yang, Zhiqiang
Zhou, Qianwei
Chen, Yang
Chen, Feng
author_facet Yu, Zhongwen
Guan, Qiu
Yang, Jianmin
Yang, Zhiqiang
Zhou, Qianwei
Chen, Yang
Chen, Feng
contents In existing medical Region of Interest (ROI) detection, there lacks an algorithm that can simultaneously satisfy both real-time performance and accuracy, not meeting the growing demand for automatic detection in medicine. Although the basic YOLO framework ensures real-time detection due to its fast speed, it still faces challenges in maintaining precision concurrently. To alleviate the above problems, we propose a novel model named Lightweight Shunt Matching-YOLO (LSM-YOLO), with Lightweight Adaptive Extraction (LAE) and Multipath Shunt Feature Matching (MSFM). Firstly, by using LAE to refine feature extraction, the model can obtain more contextual information and high-resolution details from multiscale feature maps, thereby extracting detailed features of ROI in medical images while reducing the influence of noise. Secondly, MSFM is utilized to further refine the fusion of high-level semantic features and low-level visual features, enabling better fusion between ROI features and neighboring features, thereby improving the detection rate for better diagnostic assistance. Experimental results demonstrate that LSM-YOLO achieves 48.6% AP on a private dataset of pancreatic tumors, 65.1% AP on the BCCD blood cell detection public dataset, and 73.0% AP on the Br35h brain tumor detection public dataset. Our model achieves state-of-the-art performance with minimal parameter cost on the above three datasets. The source codes are at: https://github.com/VincentYuuuuuu/LSM-YOLO.
format Preprint
id arxiv_https___arxiv_org_abs_2408_14087
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle LSM-YOLO: A Compact and Effective ROI Detector for Medical Detection
Yu, Zhongwen
Guan, Qiu
Yang, Jianmin
Yang, Zhiqiang
Zhou, Qianwei
Chen, Yang
Chen, Feng
Computer Vision and Pattern Recognition
In existing medical Region of Interest (ROI) detection, there lacks an algorithm that can simultaneously satisfy both real-time performance and accuracy, not meeting the growing demand for automatic detection in medicine. Although the basic YOLO framework ensures real-time detection due to its fast speed, it still faces challenges in maintaining precision concurrently. To alleviate the above problems, we propose a novel model named Lightweight Shunt Matching-YOLO (LSM-YOLO), with Lightweight Adaptive Extraction (LAE) and Multipath Shunt Feature Matching (MSFM). Firstly, by using LAE to refine feature extraction, the model can obtain more contextual information and high-resolution details from multiscale feature maps, thereby extracting detailed features of ROI in medical images while reducing the influence of noise. Secondly, MSFM is utilized to further refine the fusion of high-level semantic features and low-level visual features, enabling better fusion between ROI features and neighboring features, thereby improving the detection rate for better diagnostic assistance. Experimental results demonstrate that LSM-YOLO achieves 48.6% AP on a private dataset of pancreatic tumors, 65.1% AP on the BCCD blood cell detection public dataset, and 73.0% AP on the Br35h brain tumor detection public dataset. Our model achieves state-of-the-art performance with minimal parameter cost on the above three datasets. The source codes are at: https://github.com/VincentYuuuuuu/LSM-YOLO.
title LSM-YOLO: A Compact and Effective ROI Detector for Medical Detection
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2408.14087