首页> 外文会议>International Symposium on Automation and Robotics in Construction and Mining >A Cascaded Classifier Approach to Window Detection in Facade Images
【24h】

A Cascaded Classifier Approach to Window Detection in Facade Images

机译:立面图像窗口检测的级联分类器方法

获取原文

摘要

A major part of recent developments in civil engineering in the urban context evolved around building and city models. Especially for a precise risk assessment of damages to existing buildings induced by ground movements, accurate models are inevitable. Beside the shape of a building, the focus is also on components compromising a building's stiffness. Particularly, by including wall openings such as windows into risk analyses, these can be improved to provide more reliable predictions. However, most publicly available data sources only provide simple block models of existing buildings sometimes extended by roof shapes. As a consequence, any information concerning the windows of a building must be integrated into the model using other data sources. Whereas numerous approaches address the refinement of building shapes, their windows and other components are commonly disregarded. Although cascaded classifiers already turned out to yield good results in general and applying them to window detection seems promising, such approaches are yet insufficient to reliably extend building models. Drawing on previous findings, we present an approach to window detection in facade images satisfying the needs of risk assessment analyses. Our detection system combines a soft cascaded classifier consisting of thresholded Haar-like features with a sliding window detector extracting image patches for classification. The soft cascaded design improves the detection rate over previously made approaches while coincidentally reducing the amount of required features. Further, we evaluate the effect of a rectified dataset on the classification results compared to its counterpart with images taken from varying angles.
机译:城市背景下的土木工程最近发展的主要部分发生在建筑和城市模型周围。特别是对于对地面运动引起的现有建筑物的损害的精确风险评估,准确的模型是不可避免的。除了建筑物的形状外,焦点还在损害建筑物刚度的部件上。特别地,通过包括诸如窗户的壁开口进入风险分析,可以改进这些以提供更可靠的预测。然而,最公开的数据来源仅提供有时屋顶形状延伸的现有建筑物的简单块模型。因此,必须使用其他数据源集成有关建筑物Windows的任何信息。虽然众多方法解决了建筑物形状的细化,但它们的窗户和其他组件通常被忽略。虽然级联分类器已经证明,但一般并将它们应用于窗口检测似乎有希望,但这种方法尚不足,无法可靠地延长建筑模型。绘制以前的发现,我们在满足风险评估分析需求的外观图像中提出了一种窗口检测方法。我们的检测系统组合了由阈值哈尔状特征组成的软级联分类器,其中具有滑动窗口检测器提取图像贴片以进行分类。软级联设计改善了先前制造的方法的检测率,同时巧合地减少了所需特征的量。此外,与其对应于不同角度拍摄的图像相比,我们评估整流数据集对分类结果的影响。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号