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Is color an intrinsic property of construction object's representation? Evaluating color-based models to detect objects by using data mining techniques

机译:颜色是施工对象表示的内在财产吗?评估基于颜色的模型来通过使用数据挖掘技术来检测对象

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Purpose Structural component detection is a prerequisite for various applications, including construction progress measurement and quality inspection. However, it is still a challenge to detect structural components reliably in construction site images taken from a complex and unstructured construction environment. Because construction site images contain numerous unexpected objects, structural components in the images are observed under different poses and varying lighting conditions. The aim of this study is to discover how color information effectively works on structural component detection in construction site images by incorporating hybrid data mining techniques. Method: To verify the effectiveness of the color-based models for structural components detection, this study involves data collection, feature selection, and color-based model building. First, this study tried to collect the most comprehensive data set on structural components detection before assessment. Second, it attempted to extract the best set of effective color features among all the available color features through feature selection. Third, this study evaluated and compared the performance of the constructed color-based models (defined in terms of accuracy rate) using hybrid data mining techniques. This study then identified the most effective configuration of color features and data mining techniques to detect structural components. Results & Discussion: The experimental results suggest that color can be a powerful cue for reliable detection of structural components in construction site images. The use of the set of color features in combination with a hybrid data mining technique in structural component detection is highly accurate (accuracy rate above 95%) in detecting structural components composed of major construction materials (e.g. concrete, steel, and wood). The results from structural components detection that are obtained by the proposed combination are reliable for use as an essential input for various applications, including construction progress measurement and quality inspection.
机译:目的结构组件检测是各种应用的先决条件,包括施工进度测量和质量检验。然而,在复杂和非结构化施工环境中占用的施工现场图像中可靠地检测结构部件仍然是一项挑战。因为施工现场图像包含许多意外的对象,所以在不同的姿势和不同的照明条件下观察图像中的结构组件。本研究的目的是通过结合混合数据挖掘技术,了解如何有效地在施工现场图像中有效地处理结构部件检测。方法:为了验证基于颜色的结构组件检测的模型的有效性,本研究涉及数据收集,特征选择和基于颜色的模型建筑。首先,本研究试图在评估前收集结构组件检测上的最全面的数据。其次,它试图通过特征选择提取所有可用颜色特征中的最佳有效颜色特征。第三,本研究评估并比较了使用混合数据挖掘技术的构建的基于颜色的模型的性能(在精度率方面定义)。然后,该研究确定了彩色特征和数据挖掘技术的最有效配置,以检测结构部件。结果与讨论:实验结果表明,颜色可以是可靠地检测施工现场图像中结构部件的强大提示。在结构部件检测中使用与混合数据采矿技术组合的颜色特征在检测由主要建筑材料(例如混凝土,钢材和木材)组成的结构部件时高精度(精度高于95%)。通过所提出的组合获得的结构部件检测的结果可靠,用作各种应用的必要输入,包括构建进度测量和质量检查。

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