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Follicular Unit Classification Method Using Angle Variation of Boundary Vector for Automatic Hair Implant System

机译:毛发自动植入系统中基于边界矢量角度变化的毛囊单位分类方法

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This paper presents a novel follicular unit (FU) classification method based on an angle variation of a boundary vector according to the number of hairs in several FU images. The recently developed robotic FU harvest system, ARTAS, classifies through digital imaging the FU type based on the number of hairs with defects in the contour and outline profile of the FU of interest. However, this method has a drawback in that the FU classification is inaccurate because it causes unintended defects in the outline profile of the FU. To overcome this drawback, the proposed method classifies the FU’s type by the number of variation points that are calculated using an angle variation a boundary vector. The experimental results show that the proposed method is robust and accurate for various FU shapes, compared to the contour-outline profile FU classification method of the ARTAS system.
机译:本文提出了一种新的滤泡单位分类方法,该方法基于边界向量的角度变化,该边界向量根据几张FU图像中的毛发数量而变化。最近开发的机器人FU收获系统ARTAS根据感兴趣的FU的轮廓和轮廓中有缺陷的毛发数量,通过数字成像对FU类型进行分类。但是,该方法的缺点在于,FU分类不准确,因为它在FU的轮廓中引起了意想不到的缺陷。为了克服这个缺点,提出的方法通过使用边界矢量和角度变化计算出的变化点的数量对FU的类型进行分类。实验结果表明,与ARTAS系统的轮廓轮廓轮廓FU分类方法相比,所提出的方法对于各种FU形状都是鲁棒且准确的。

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