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Parameter optimization for automated concrete detection in image data

机译:用于图像数据自动混凝土检测的参数优化

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Several research studies have been recently initiated to investigate the use of construction site images for automated infrastructure inspection, progress monitoring, etc. In these studies, it is always necessary to extract material regions (concrete or steel) from the images. Existing methods made use of material's special color/texture ranges for material information retrieval, but they do not sufficiently discuss how to find these appropriate color/texture ranges. As a result, users have to define appropriate ones by themselves, which is difficult for those who do not have enough image processing background. This paper presents a novel method of identifying concrete material regions using machine learning techniques. Under the method, each construction site image is first divided into regions through image segmentation. Then, the visual features of each region are calculated and classified with a pre-trained classifier. The output value determines whether the region is composed of concrete or not. The method was implemented using C++ and tested over hundreds of construction site images. The results were compared with the manual classification ones to indicate the method's validity.
机译:最近启动了一些研究,以调查建筑工地图像用于自动化基础设施检查,进度监控等的情况。在这些研究中,始终有必要从图像中提取材料区域(混凝土或钢铁)。现有方法利用了材料的特殊颜色/纹理范围来检索材料信息,但是它们并未充分讨论如何找到这些合适的颜色/纹理范围。结果,用户必须自己定义适当的图像,这对于那些没有足够图像处理背景的人来说是困难的。本文提出了一种使用机器学习技术识别混凝土材料区域的新颖方法。在该方法下,首先通过图像分割将每个施工现场图像划分为区域。然后,计算每个区域的视觉特征,并使用预先训练的分类器对它们进行分类。输出值确定该区域是否由混凝土组成。该方法是使用C ++实现的,并在数百个施工现场图像上进行了测试。将结果与手动分类的结果进行比较,以表明该方法的有效性。

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