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Autori principali: Zhou, Ling, Yuan, Runtian, Liu, Yi, Zhang, Yuejie, Feng, Rui, Gao, Shang
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2507.07443
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author Zhou, Ling
Yuan, Runtian
Liu, Yi
Zhang, Yuejie
Feng, Rui
Gao, Shang
author_facet Zhou, Ling
Yuan, Runtian
Liu, Yi
Zhang, Yuejie
Feng, Rui
Gao, Shang
contents Ultrasound imaging is a prevalent diagnostic tool known for its simplicity and non-invasiveness. However, its inherent characteristics often introduce substantial noise, posing considerable challenges for automated lesion or organ segmentation in ultrasound video sequences. To address these limitations, we propose the Dual Semantic-Aware Network (DSANet), a novel framework designed to enhance noise robustness in ultrasound video segmentation by fostering mutual semantic awareness between local and global features. Specifically, we introduce an Adjacent-Frame Semantic-Aware (AFSA) module, which constructs a channel-wise similarity matrix to guide feature fusion across adjacent frames, effectively mitigating the impact of random noise without relying on pixel-level relationships. Additionally, we propose a Local-and-Global Semantic-Aware (LGSA) module that reorganizes and fuses temporal unconditional local features, which capture spatial details independently at each frame, with conditional global features that incorporate temporal context from adjacent frames. This integration facilitates multi-level semantic representation, significantly improving the model's resilience to noise interference. Extensive evaluations on four benchmark datasets demonstrate that DSANet substantially outperforms state-of-the-art methods in segmentation accuracy. Moreover, since our model avoids pixel-level feature dependencies, it achieves significantly higher inference FPS than video-based methods, and even surpasses some image-based models. Code can be found in \href{https://github.com/ZhouL2001/DSANet}{DSANet}
format Preprint
id arxiv_https___arxiv_org_abs_2507_07443
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Dual Semantic-Aware Network for Noise Suppressed Ultrasound Video Segmentation
Zhou, Ling
Yuan, Runtian
Liu, Yi
Zhang, Yuejie
Feng, Rui
Gao, Shang
Computer Vision and Pattern Recognition
Ultrasound imaging is a prevalent diagnostic tool known for its simplicity and non-invasiveness. However, its inherent characteristics often introduce substantial noise, posing considerable challenges for automated lesion or organ segmentation in ultrasound video sequences. To address these limitations, we propose the Dual Semantic-Aware Network (DSANet), a novel framework designed to enhance noise robustness in ultrasound video segmentation by fostering mutual semantic awareness between local and global features. Specifically, we introduce an Adjacent-Frame Semantic-Aware (AFSA) module, which constructs a channel-wise similarity matrix to guide feature fusion across adjacent frames, effectively mitigating the impact of random noise without relying on pixel-level relationships. Additionally, we propose a Local-and-Global Semantic-Aware (LGSA) module that reorganizes and fuses temporal unconditional local features, which capture spatial details independently at each frame, with conditional global features that incorporate temporal context from adjacent frames. This integration facilitates multi-level semantic representation, significantly improving the model's resilience to noise interference. Extensive evaluations on four benchmark datasets demonstrate that DSANet substantially outperforms state-of-the-art methods in segmentation accuracy. Moreover, since our model avoids pixel-level feature dependencies, it achieves significantly higher inference FPS than video-based methods, and even surpasses some image-based models. Code can be found in \href{https://github.com/ZhouL2001/DSANet}{DSANet}
title Dual Semantic-Aware Network for Noise Suppressed Ultrasound Video Segmentation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.07443