Automated building damage detection on digital imagery using machine learning

Q3 Engineering
V. Kashtan, V. Hnatushenko
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引用次数: 0

Abstract

Purpose. To develop an automated method based on machine learning for accurate detection of features of a damaged building on digital imagery. Methodology. This article presents an approach that employs a combination of unsupervised machine learning techniques, specifically Principal Component Analysis (PCA), K-means clustering, and Density-Based Spatial Clustering of Applications with Noise (DBSCAN), to identify building damage resulting from military conflicts. The PCA method is utilized to identify principal vectors representing the directions of maximum variance in the data. Subsequently, the K-means method is applied to cluster the feature vector space, with the predefined number of clusters reflecting the number of principal vectors. Each cluster represents a group of similar blocks of image differences, which helps to identify significant features associated with fractures. Finally, the DBSCAN method is employed to identify areas where points with similar characteristics are located. Subsequently, a binary fracture mask is generated, with pixels exceeding the threshold being identified as fractures. Findings. The introduced methodology attains an accuracy rate of 98.13 %, surpassing the performance of conventional methods such as DBSCAN, PCA, and K-means. Furthermore, the method exhibits a recall of 82.38 %, signifying its ability to effectively detect a substantial proportion of positive examples. Precision of 58.54 % underscores the methodology’s capability to minimize false positives. The F1 Score of 70.90 % demonstrates a well-balanced performance between precision and recall. Originality. DBSCAN, PCA and K-means methods have been further developed in the context of automated detection of building destruction in aerospace images. This allows us to significantly increase the accuracy and efficiency of monitoring territories, including those affected by the consequences of military aggression. Practical value. The results obtained can be used to improve automated monitoring systems for urban development and can also serve as the basis for the development of effective strategies for the restoration and reconstruction of damaged infrastructure.
利用机器学习自动检测数字图像上的建筑物损坏情况
目的开发一种基于机器学习的自动方法,用于准确检测数字图像上受损建筑物的特征。方法。本文介绍了一种结合使用无监督机器学习技术的方法,特别是主成分分析(PCA)、K-均值聚类和基于密度的噪声应用空间聚类(DBSCAN),以识别军事冲突造成的建筑物损坏。PCA 方法用于识别代表数据最大方差方向的主向量。随后,采用 K-means 方法对特征向量空间进行聚类,预定义的聚类数量反映了主向量的数量。每个聚类代表一组相似的图像差异块,有助于识别与断裂相关的重要特征。最后,采用 DBSCAN 方法来识别具有相似特征的点所在的区域。随后,生成二元断裂掩码,将超过阈值的像素识别为断裂。研究结果引入的方法准确率达到 98.13%,超过了 DBSCAN、PCA 和 K-means 等传统方法。此外,该方法的召回率为 82.38%,表明它能够有效地检测到相当大比例的正面实例。精确度为 58.54 %,突出了该方法将误报率降至最低的能力。F1 分数为 70.90 %,显示了精确度和召回率之间的良好平衡。独创性在航空航天图像中建筑物破坏的自动检测方面,DBSCAN、PCA 和 K-means 方法得到了进一步发展。这使我们能够大大提高监测领土(包括受军事侵略后果影响的领土)的准确性和效率。实用价值。所取得的成果可用于改进城市发展的自动监测系统,也可作为制定恢复和重建受损基础设施的有效战略的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.70
自引率
0.00%
发文量
148
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