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Automatic Object-Detection of School Building Elements in Visual Data: A Gray-Level Histogram Statistical Feature-Based Method

机译:自动对象检测视觉数据中的学校建筑元素:基于灰度直方图统计特征的方法

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Automatic object-detection technique can improve the efficiency of building data collection for semi-empirical methods to assess the seismic vulnerability of buildings at a regional scale. However, current structural element detection methods rely on color, texture and/or shape information of the object to be detected and are less flexible and reliable to detect columns or walls with unknown surface materials or deformed shapes in images. To overcome these limitations, this paper presents an innovative gray-level histogram (GLH) statistical feature-based object-detection method for automatically identifying structural elements, including columns and walls, in an image. This method starts with converting an RGB image (i.e. the image colors being a mix of red, green and blue light) into a grayscale image, followed by detecting vertical boundary lines using the Prewitt operator and the Hough transform. The detected lines divide the image into several sub-regions. Then, three GLH statistical parameters (variance, skewness, and kurtosis) of each sub-region are calculated. Finally, a column or a wall in a sub-region is recognized if these features of the sub-region satisfy the predefined criteria. This method was validated by testing the detection precision and recall for column and wall images. The results indicated the high accuracy of the proposed method in detecting structural elements with various surface treatments or deflected shapes. The proposed structural element detection method can be extended to detecting more structural characteristics and retrieving structural deficiencies from digital images in the future, promoting the automation in building data collection.
机译:自动对象检测技术可以提高建筑数据收集的效率,以获得半实证方法,以评估建筑物的地震脆弱性在区域规模。然而,电流结构元件检测方法依赖于待检测的物体的颜色,纹理和/或形状信息,并且不太柔性可靠地检测具有未知表面材料的列或壁或图像中变形的形状。为了克服这些限制,本文提出了一种创新的灰度直方图(GLH)基于统计特征的对象检测方法,用于自动识别图像中的结构元素,包括列和墙壁。该方法从转换RGB图像(即,像红色,绿色和蓝光的混合)转换为灰度图像,然后使用PREWITT操作员和Hough变换检测垂直边界线。检测到的线将图像划分为几个子区域。然后,计算每个子区域的三个GLH统计参数(方差,偏斜和峰值)。最后,如果子区域的这些特征满足预定标准,则识别子区域中的列或壁。通过测试检测精度并召回列和墙壁图像来验证该方法。结果表明了在用各种表面处理或偏转的形状检测结构元件的提出方法的高精度。所提出的结构元素检测方法可以扩展到检测到更高的结构特征和在未来的数字图像中检索结构缺陷,促进构建数据收集的自动化。

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