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Convolutional Neural Network Learning Versus Traditional Segmentation for the Approximation of the Degree of Defective Surface in Titanium for Implantable Medical Devices

机译:卷积神经网络学习与传统分割,用于植入医疗装置钛缺陷表面的近似程度

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One prevalent option used in the manufacturing of dental and orthopedic medical implants is titanium, since it is a strong, yet light, biocompatible metal. Nevertheless, possible micro-defects due to earlier chemical treatment can alter its surface morphology and lead to less resistance of the material for implantation. The scope of the present paper is to give an estimate of the defectuous area in titanium laminas by analysing microscopic images of the surface. This is done comparatively between traditional segmentation with thresholding and a sliding window classifier based on convolutional neural networks. The results show the supportive role of the proposed means towards a timely recognition of defective titanium sheets in the fabrication process of medical implants.
机译:用于制造牙科和矫形医疗植入物的一种普遍的选择是钛,因为它是强烈但光,生物相容性的金属。然而,由于早期的化学处理导致的可能的微缺陷可以改变其表面形态,并导致植入材料的耐受性的较低阻力。本文的范围是通过分析表面的微观图像来赋予钛晶虫中缺陷区域的估计。这是在传统分割之间进行比较,其具有基于卷积神经网络的阈值处理和滑动窗口分类。结果表明提出的手段在医疗植入物的制造过程中及时识别有缺陷的钛板的支持作用。

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