Image processing technique for segmenting microstructural porosity of laser-welded thermoplastics

K. Leboeuf, Iman Makaremi, R. Muscedere, M. Ahmadi
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引用次数: 2

Abstract

Plastics are used in a truly vast number of applications, and research is continously carried out to improve every aspect of the plastics industry. A recent study of laser transmission welding [1] required cross-sectional images of the weld's microstructure to be analyzed for the presence of pores, which are tiny bubbles that may form during the weld process. It is believed that the number and size of pores may be indicative of the weld strength [1]. The current state of the art for detecting these pores involves manually drawing a contour around each one; a laborious process given that a typical sample may have hundreds-to-thousands of pores. This paper presents a segmentation system for classifying the pixels of a microstructural image of a thermoplastic laser weld as either belonging to a pore or the background. The algorithm is robust in terms of dealing with noise from flbreglass strands, cloudy pores, and varying exposure time. On average, it is estimated that the proposed algorithm is able to correctly classify pores at a rate of approximately 90% without requiring any user intervention.
激光焊接热塑性塑料微结构孔隙度分割的图像处理技术
塑料的应用范围非常广泛,不断进行研究以改进塑料工业的各个方面。最近一项关于激光透射焊接的研究[1]需要对焊缝微观结构的横截面图像进行分析,以确定是否存在气孔,气孔是焊接过程中可能形成的微小气泡。人们认为气孔的数量和大小可以反映焊缝的强度[1]。用于检测这些孔隙的当前技术状态涉及在每个孔周围手动绘制轮廓;考虑到一个典型的样品可能有成百上千个孔,这是一个费力的过程。本文提出了一种用于热塑性激光焊接显微结构图像像素点分类的分割系统。该算法在处理纤维玻璃线、浑浊孔隙和不同曝光时间的噪声方面具有鲁棒性。平均而言,估计所提出的算法能够在不需要任何用户干预的情况下以大约90%的率正确分类孔隙。
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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