在UNET中使用焦点注意卷积块分割视网膜血管

Rafael Ortiz-Feregrino, S. Tovar-Arriaga, J. Pedraza-Ortega, J. Rodríguez-Reséndíz
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引用次数: 0

摘要

视网膜静脉分割是一项至关重要的任务,有助于早期发现健康问题,使其成为一个重要的研究领域。随着人工智能的最新进展,我们现在可以为这项任务开发高度可靠和高效的模型。CNN一直是图像分析任务的传统选择。然而,具有独特注意力机制的视觉变形者的出现已被证明是游戏规则的改变者。然而,视觉转换器需要大量的数据和计算能力,这使得它们不适合数据和资源有限的任务。为了应对这一约束,我们采用了视觉变形器的注意力模块,并将其集成到基于cnn的UNET网络中,取得了优于其他模型的性能。该模型在HRF、Drive、LES-AV、CHASE-DB1、Aria-A、Aria-D、Aria-C、IOSTAR、STARE和DRGAHIS等数据集上的召回率为0.89,AUC为0.98,准确率为0.97,灵敏度为0.97。此外,无论相机类型或原始图像分辨率如何,该模型都能准确识别血管,保证了模型的泛化性。视网膜静脉分割的这一突破可以改善几种健康状况的早期诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of Retinal Blood Vessels Using Focal Attention Convolution Blocks in a UNET
Retinal vein segmentation is a crucial task that helps in the early detection of health problems, making it an essential area of research. With recent advancements in artificial intelligence, we can now develop highly reliable and efficient models for this task. CNN has been the traditional choice for image analysis tasks. However, the emergence of visual transformers with their unique attention mechanism has proved to be a game-changer. However, visual transformers require a large amount of data and computational power, making them unsuitable for tasks with limited data and resources. To deal with this constraint, we adapted the attention module of visual transformers and integrated it into a CNN-based UNET network, achieving superior performance compared to other models. The model achieved a 0.89 recall, 0.98 AUC, 0.97 accuracy, and 0.97 sensitivity on various datasets, including HRF, Drive, LES-AV, CHASE-DB1, Aria-A, Aria-D, Aria-C, IOSTAR, STARE and DRGAHIS. Moreover, the model can recognize blood vessels accurately, regardless of camera type or the original image resolution, ensuring that it generalizes well. This breakthrough in retinal vein segmentation could improve the early diagnosis of several health conditions.
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