The lack of data on existing buildings hinders efforts towards repair, reuse, and recycling of materials, which are crucial for mitigating the climate crisis. Manual acquisition of building data is complex and time-consuming, but combining street-level imagery with computer vision could significantly scale-up building materials documentation. We formulate the problem of building facade material detection as a multi-label classification task and present a method using GIS and street view imagery with just a few hundred annotated samples and a fine-tuned image classification model. Our method shows strong performance with macro-averaged F1 scores of 0.91 for Tokyo, 0.91 for NYC, 0.96 for Zurich, and 0.93 for the merged dataset. By utilizing o...
Currently, the Ministry of Land, Infrastructure, Transport, and Tourism (Japan) is in the process of...
One of the most important tasks in urban remote sensing is the detection of impervious surfaces (IS)...
Urban areas are responsible for a great share of non-renewable materials consumption. The unsustaina...
Intense urbanization has led us to rethink construction and demolition practices on a global scale. ...
To address the need for a shift from a linear to a circular economy in the built environment, this p...
33rd Conference on Neural Information Processing Systems (NeurIPS 2019), Vancouver, Canada. Corresp...
Accurate and efficiently updated information on color-coated steel sheet (CCSS) roof materials in ur...
Part 1: Machine Learning (ML), Deep Learning (DL), Internet of Things (IoT)International audienceAs ...
In order for a risk assessment to deliver sensible results, exposure in the concerned area must be k...
Residential building material stock constitutes a significant part of the built environment, providi...
Identifying the distribution and patterns of long-lived material stocks in buildings and infrastruct...
Land-use classification based on spaceborne or aerial remote sensing images has been extensively stu...
Facades of buildings contain various types of objects which have to be recorded for information syst...
Within this paper we propose an end-to-end approach for classifying terrestrial images of building f...
The availability of very high spatial and temporal resolution remote sensing data facilitates mappin...
Currently, the Ministry of Land, Infrastructure, Transport, and Tourism (Japan) is in the process of...
One of the most important tasks in urban remote sensing is the detection of impervious surfaces (IS)...
Urban areas are responsible for a great share of non-renewable materials consumption. The unsustaina...
Intense urbanization has led us to rethink construction and demolition practices on a global scale. ...
To address the need for a shift from a linear to a circular economy in the built environment, this p...
33rd Conference on Neural Information Processing Systems (NeurIPS 2019), Vancouver, Canada. Corresp...
Accurate and efficiently updated information on color-coated steel sheet (CCSS) roof materials in ur...
Part 1: Machine Learning (ML), Deep Learning (DL), Internet of Things (IoT)International audienceAs ...
In order for a risk assessment to deliver sensible results, exposure in the concerned area must be k...
Residential building material stock constitutes a significant part of the built environment, providi...
Identifying the distribution and patterns of long-lived material stocks in buildings and infrastruct...
Land-use classification based on spaceborne or aerial remote sensing images has been extensively stu...
Facades of buildings contain various types of objects which have to be recorded for information syst...
Within this paper we propose an end-to-end approach for classifying terrestrial images of building f...
The availability of very high spatial and temporal resolution remote sensing data facilitates mappin...
Currently, the Ministry of Land, Infrastructure, Transport, and Tourism (Japan) is in the process of...
One of the most important tasks in urban remote sensing is the detection of impervious surfaces (IS)...
Urban areas are responsible for a great share of non-renewable materials consumption. The unsustaina...