TY - JOUR
T1 - Urban Fabric Decoded: High-Precision Building Material Identification via Deep Learning and Remote Sensing
AU - Sun, Kun
AU - Li, Qiaoxuan
AU - Liu, Qiance
AU - Song, Jinchao
AU - Dai, Menglin
AU - Qian, Xingjian
AU - Gummidi, Srinivasa Raghavendra Bhuvan
AU - Yu, Bailang
AU - Creutzig, Felix
AU - Liu, Gang
PY - 2025/3
Y1 - 2025/3
N2 - Precise identification and categorization of building materials are essential for informing strategies related to embodied carbon reduction, building retrofitting, and circularity in urban environments. However, existing building material databases are typically limited to individual projects or specific geographic areas, offering only approximate assessments. Acquiring large-scale and precise material data is hindered by inadequate records and financial constraints. Here, we introduce a novel automated framework that harnesses recent advances in sensing technology and deep learning to identify roof and facade materials using remote sensing data and Google Street View imagery. The model was initially trained and validated on Odense's comprehensive dataset and then extended to characterize building materials across Danish urban landscapes, including Copenhagen, Aarhus, and Aalborg. Our approach demonstrates the model's scalability and adaptability to different geographic contexts and architectural styles, providing high-resolution insights into material distribution across diverse building types and cities. These findings are pivotal for informing sustainable urban planning, revising building codes to lower carbon emissions, and optimizing retrofitting efforts to meet contemporary standards for energy efficiency and emission reductions.
AB - Precise identification and categorization of building materials are essential for informing strategies related to embodied carbon reduction, building retrofitting, and circularity in urban environments. However, existing building material databases are typically limited to individual projects or specific geographic areas, offering only approximate assessments. Acquiring large-scale and precise material data is hindered by inadequate records and financial constraints. Here, we introduce a novel automated framework that harnesses recent advances in sensing technology and deep learning to identify roof and facade materials using remote sensing data and Google Street View imagery. The model was initially trained and validated on Odense's comprehensive dataset and then extended to characterize building materials across Danish urban landscapes, including Copenhagen, Aarhus, and Aalborg. Our approach demonstrates the model's scalability and adaptability to different geographic contexts and architectural styles, providing high-resolution insights into material distribution across diverse building types and cities. These findings are pivotal for informing sustainable urban planning, revising building codes to lower carbon emissions, and optimizing retrofitting efforts to meet contemporary standards for energy efficiency and emission reductions.
KW - Building material intensity
KW - Built environment
KW - Deep learning
KW - Remote sensing
KW - Streetview image
U2 - 10.1016/j.ese.2025.100538
DO - 10.1016/j.ese.2025.100538
M3 - Journal article
C2 - 40034611
SN - 2666-4984
VL - 24
JO - Environmental Science and Ecotechnology
JF - Environmental Science and Ecotechnology
M1 - 100538
ER -