Automatic Venous Segmentation in Venipuncture Robot Using Deep Learning

Tianbao He, Chuangqiang Guo, Li-Gen Jiang, Hansong Liu
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引用次数: 5

Abstract

Vein identification plays a pivotal role in realizing automatic venipuncture, and it has become a difficulty to segment the veins efficiently as well as accurately in the research of full-automatic venipuncture robots. Most studies in the field of vein segmentation have only focused on traditional image processing methods, the segmentation accuracy and generalization performance of which are poor. Therefore, we propose an automatic image segmentation algorithm using the U-Net model with the attention mechanism (Attention-UNet) which can suppress unnecessary features. Besides, the encoder-decoder and the skip-connection structure are applied for multi-scale feature recognition so that the segmentation accuracy can be improved. Meanwhile, on digital arm images for the vein segmentation data set (DAIVS data set), the newly-built human forearm veins data set, the effectiveness of the proposed method in vein segmentation is verified. Finally, we conduct experiments to acquire and process venous images with the Attention-UNet in real-time on the venipuncture robot. These results indicate that machine vision has better performance in complex visual tasks and can be translated into clinical application.
基于深度学习的静脉穿刺机器人自动静脉分割
静脉识别是实现全自动静脉穿刺的关键,如何高效、准确地分割静脉已成为全自动静脉穿刺机器人研究中的难点。静脉分割领域的研究大多集中在传统的图像处理方法上,其分割精度和泛化性能较差。因此,我们提出了一种利用U-Net模型和注意机制(attention - unet)的自动图像分割算法,该算法可以抑制不必要的特征。此外,采用编解码器和跳接结构进行多尺度特征识别,提高了分割精度。同时,在基于数字臂图像的静脉分割数据集(DAIVS数据集),即新建立的人体前臂静脉数据集上,验证了所提方法在静脉分割方面的有效性。最后,我们在静脉穿刺机器人上进行了利用Attention-UNet实时获取和处理静脉图像的实验。这些结果表明,机器视觉在复杂的视觉任务中有更好的表现,可以转化为临床应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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