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Evaluation of Earthquake Resistance of Urban Buildings using Image Processing and Machine Learning Techniques

机译:使用图像处理和机器学习技术评估城市建筑地震阻力

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In this project, an approach has been taken to evaluate the earthquake resistance of urban buildings in Dhaka. An automated decision support system has been developed that takes the images of the buildings along with basic information as input. The system then outputs whether the building is at risk and requires structural evaluation. Data from 1106 buildings were collected during the project from 12 different areas of Dhaka. The output decision of the system is determined using a machine learning algorithm. Specifically, a CNN-based deep learning model was trained on the data collected during this project. Every deep learning model needs a baseline to make the predictions on. In this project, the baseline was developed from the FEMA P-154 report that deals with the visual screening of buildings to assess their risks during earthquakes. FEMA is the Federal Emergency Management Agency (FEMA) of the USA, a renowned agency that works with seismic hazards. After experimenting with different parameter combinations, the maximum accuracy achieved by the model was 71%. The latest deep learning models operate on millions of instances to make their predictions. Comparatively, our model was trained on only 1106 instances. With the introduction of more data points, we can achieve an accuracy of over 90% with this model.
机译:在这个项目中,已经采取了一种方法来评估达卡城市建筑的地震抵抗。已经开发了一种自动决策支持系统,其携带建筑物的图像以及基本信息作为输入。然后,系统输出建筑物是否存在风险,需要结构评估。从达卡12个不同地区的项目期间收集来自1106建筑物的数据。系统的输出决定使用机器学习算法确定。具体地,在该项目期间收集的数据训练了基于CNN的深度学习模型。每个深度学习模型都需要基线来实现预测。在这个项目中,基线是从FEMA P-154报告制定的,该报告涉及建筑物的视觉筛选,以评估地震期间的风险。 FEMA是美国联邦应急管理机构(FEMA),是一种与地震危害合作的着名机构。在尝试不同的参数组合之后,模型所实现的最大精度为71%。最新的深度学习模式有关数百万个实例运营,以使其预测。相比之下,我们的型号仅在1106个实例上培训。随着引入更多数据点,我们可以通过此模型实现超过90%的准确性。

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