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Research on Finger Vein Image Segmentation and Blood Sampling Point Location in Automatic Blood Collection

机译:自动血液收集中手指静脉图像分割和血液采样点位置的研究

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摘要

In the fingertip blood automatic sampling process, when the blood sampling point in the fingertip venous area, it will greatly increase the amount of bleeding without being squeezed. In order to accurately locate the blood sampling point in the venous area, we propose a new finger vein image segmentation approach basing on Gabor transform and Gaussian mixed model (GMM). Firstly, Gabor filter parameter can be set adaptively according to the differential excitation of image and we use the local binary pattern (LBP) to fuse the same-scale and multi-orientation Gabor features of the image. Then, finger vein image segmentation is achieved by Gabor-GMM system and optimized by the max flow min cut method which is based on the relative entropy of the foreground and the background. Finally, the blood sampling point can be localized with corner detection. The experimental results show that the proposed approach has significant performance in segmenting finger vein images which the average accuracy of segmentation images reach 91.6%.
机译:在指尖血液自动采样过程中,当指尖静脉区域的血液采样点时,它将大大增加出血量而不会被挤压。为了准确定位静脉区域的血液采样点,我们提出了一种新的手指静脉图像分割方法,基于Gabor变换和高斯混合模型(GMM)。首先,可以根据图像的差分激发自适应地设置Gabor滤波器参数,并且我们使用本地二进制模式(LBP)来熔化图像的相同级别和多向Gabor特征。然后,通过Gabor-GMM系统实现手指静脉图像分割,并通过基于前景和背景的相对熵的最大流动MIN切割方法进行了优化。最后,血液采样点可以用角检测定位。实验结果表明,该方法在分割静脉图像中具有显着性能,分割图像的平均精度达到91.6%。

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