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JDR Vol.20 No.6 pp. 1023-1033
(2025)
doi: 10.20965/jdr.2025.p1023

Paper:

Estimation of Building Heights in Peru from High-Resolution Stereo Optical Satellite Imagery

Wen Liu*1,† ORCID Icon, Mamoru Kamegawa*1, Bruno Adriano*2 ORCID Icon, Hiroyuki Miura*3 ORCID Icon, Masashi Matsuoka*4 ORCID Icon, Italo Inocente*1,*5 ORCID Icon, Fernando Garcia*5 ORCID Icon, Jorge Morales*2,*5 ORCID Icon, Miguel Diaz*5 ORCID Icon, and Miguel Estrada*5 ORCID Icon

*1Graduate School of Engineering, Chiba University
1-33 Yayoi-cho, Inage-ku, Chiba, Chiba 263-8522, Japan

†Corresponding author

Corresponding author

*2International Research Institute of Disaster Science, Tohoku University
Sendai, Japan

*3Graduate School of Advanced Science and Engineering, Hiroshima University
Higashi-Hiroshima, Japan

*4School of Environment and Society, Institute of Science Tokyo
Yokohama, Japan

*5Centro Peruano Japonés de Investigaciones Sísmicas y Mitigación de Desastres, Facultad de Ingeniería Civil, Universidad Nacional de Ingeniería
Lima, Peru

Received:
February 17, 2025
Accepted:
October 23, 2025
Published:
December 1, 2025
Keywords:
building height, stereo matching, digital surface model, 3D point cloud, residential lot
Abstract

Estimating building heights is essential for urban planning, building resilience, and disaster risk assessment. This study introduces a method for deriving building heights using stereo pairs of high-resolution optical satellite images. A 3D point cloud was generated through stereo matching of two optical satellite images, and a high-resolution digital surface model was constructed to estimate building heights. In the absence of detailed building outlines, building height was calculated by subtracting the elevation outside the lot outline from that within the lot outline. Estimated building heights were then converted to floor numbers for evaluation. Validation involved comparing estimated floor numbers with manually counted floor numbers from field surveys and a 3D model generated from UAV imagery. Results indicated that 42% of buildings had accurately estimated floor numbers, and 82% were within a one-floor error margin. This approach offers a rapid, cost-effective solution for height estimation, especially in areas lacking detailed cadastral or LiDAR data.

Cite this article as:
W. Liu, M. Kamegawa, B. Adriano, H. Miura, M. Matsuoka, I. Inocente, F. Garcia, J. Morales, M. Diaz, and M. Estrada, “Estimation of Building Heights in Peru from High-Resolution Stereo Optical Satellite Imagery,” J. Disaster Res., Vol.20 No.6, pp. 1023-1033, 2025.
Data files:
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