Photometric Intensity Profiles Analysis for Thick Segment Recognition and Geometric Measures

N. Aubry, Bertrand Kerautret, P. Even, Isabelle Debled-Rennesson
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引用次数: 1

Abstract

Abstract The segmentation or the geometric analysis of specular objects is known as a difficult problem in the computer vision domain. It is also true for the problem of line detection where the specular reflection implies numerous false positive line detection or missing lines located on the dark parts of the object. This limitation reduces its potential use for concrete industrial applications where metallic objects are frequent. In order to overcome this limitation, a new strategy to detect thick segment is proposed. It is not based on the image gradient as usually, but rather exploits the image intensity profile defined inside a parallel strip primitive. Associated to a digital straight segment recognition algorithmwhich is robust to noise, this strategy was implemented to track metallic tubular objects in gray-level images. The efficiency of the proposed method is demonstrated through extensive tests using an actual industrial application. An alternate release intended to overcome the possible impact of the digitization process on the achieved performance is also introduced. Both strategies are discussed at the end of the article.
厚段识别的光度强度分析及几何度量
高光物体的分割或几何分析一直是计算机视觉领域的一个难题。对于线检测问题也是如此,其中镜面反射意味着许多假阳性线检测或位于物体黑暗部分的缺失线。这一限制降低了其在金属物体频繁出现的混凝土工业应用中的潜在用途。为了克服这一局限性,提出了一种新的粗段检测策略。它不像通常那样基于图像梯度,而是利用在平行条原语内定义的图像强度配置文件。结合对噪声具有鲁棒性的数字直线段识别算法,实现了对灰度图像中金属管状物体的跟踪。通过实际工业应用的大量测试,证明了所提出方法的有效性。还介绍了旨在克服数字化过程对所实现性能的可能影响的替代释放。本文最后讨论了这两种策略。
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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