Litcius/Paper detail

View VULMA: Data Set for Training a Machine-Learning Tool for a Fast Vulnerability Analysis of Existing Buildings

Angelo Cardellicchio, Sergio Ruggieri, Valeria Leggieri, Giuseppina Uva

2021Data27 citationsDOIOpen Access PDF

Abstract

The paper presents View VULMA, a data set specifically designed for training machine-learning tools for elaborating fast vulnerability analysis of existing buildings. Such tools require supervised training via an extensive set of building imagery, for which several typological parameters should be defined, with a proper label assigned to each sample on a per-parameter basis. Thus, it is clear how defining an adequate training data set plays a key role, and several aspects should be considered, such as data availability, preprocessing, augmentation and balancing according to the selected labels. In this paper, we highlight all these issues, describing the pursued strategies to elaborate a reliable data set. In particular, a detailed description of both requirements (e.g., scale and resolution of images, evaluation parameters and data heterogeneity) and the steps followed to define View VULMA are provided, starting from the data assessment (which allowed to reduce the initial sample of about 20.000 images to a subset of about 3.000 pictures), to achieve the goal of training a transfer-learning-based automated tool for fast estimation of the vulnerability of existing buildings from single pictures.

Topics & Concepts

Computer sciencePreprocessorSample (material)Set (abstract data type)Machine learningVulnerability (computing)Artificial intelligenceKey (lock)Data setData miningData pre-processingTraining setScale (ratio)Transfer of learningChemistryComputer securityQuantum mechanicsPhysicsProgramming languageChromatographyInfrastructure Maintenance and MonitoringAnomaly Detection Techniques and Applications3D Surveying and Cultural Heritage