利用多源数据检测农村废弃房屋

IF 0.6 Q4 BUSINESS, FINANCE
Chan-Jae Lee
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引用次数: 0

摘要

摘要废弃房屋已成为当地景观的一个共同特征:废弃房屋数量的增加是韩国许多县面临的一大挑战。他们的存在对社区产生了负面影响,破坏了社区的审美品质,贬低了社区财产的安全感,并加深了地方融资的财政赤字。发现废弃房屋是地方政府实现充分住房管理的第一步。这项研究旨在为识别农村地区的废弃房屋提供一种具有成本效益的快速方法。利用多源数据,即图像和建筑登记数据,并设计了一个多输入神经网络来采用这些异构数据集。通过两个源数据集的训练,所提出的网络在对废弃房屋进行分类时达到了86.2%的准确率,这在行政实践中是可以接受的性能水平。以这种方式确定的废弃房屋数据库有望促进政府有效的住房管理,并最终有助于减少农村地区的空置率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Abandoned Houses in Rural Areas using Multi-Source Data
Abstract Abandoned houses have become a common feature of the local landscapes: the rising number of abandoned houses is a major challenge facing many counties in South Korea. Their presence negatively influences the neighborhood by undermining its aesthetic quality, depreciating the perception of safety in the neighborhood properties, and deepening the fiscal deficit of local financing. The detection of abandoned houses is the first step toward adequate housing management by local governments. This study aims to provide a cost-effective and prompt approach to identifying abandoned houses in rural areas. Multi-source data, that is, images and building registry data are utilized and a multi-input neural network is designed to adopt these heterogeneous datasets. Trained by the two source datasets, the proposed network achieves 86.2% accuracy in classifying abandoned houses, which is an acceptable performance level in administrative practice. The database of abandoned houses identified in this manner is expected to promote effective housing management by governments and ultimately contribute to mitigating vacancies in rural areas.
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来源期刊
Real Estate Management and Valuation
Real Estate Management and Valuation Economics, Econometrics and Finance-Finance
CiteScore
1.50
自引率
25.00%
发文量
24
审稿时长
23 weeks
期刊介绍: Real Estate Management and Valuation (REMV) is a journal that publishes new theoretical and practical insights that improve our understanding in the field of real estate valuation, analysis and property management. The aim of the Polish Real Estate Scientific Society (Towarzystwo Naukowe Nieruchomości) is developing and disseminating knowledge about land management and the methods, techniques and principles of real estate valuation and the popularization of scientific achievements in this field, as well as their practical applications in the activities of economic entities.
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