Building height estimation via satellite metadata and shadow instance detection

Autor: Moses W. Chan, Mary L. Comer, Edward J. Delp, Hanxiang Hao, Latisha Konz, Emily R. Bartusiak, Mridul Gupta, Sriram Baireddy, Kevin J. LaTourette
Rok vydání: 2021
Předmět:
Zdroj: Automatic Target Recognition XXXI.
DOI: 10.1117/12.2585012
Popis: Estimating building height from satellite imagery is important for digital surface modeling while also providing rich information for change detection and building footprint detection. The acquisition of building height usually requires a LiDAR system, which is not often available in many satellite systems. In this paper, we describe a building height estimation method that does not require building height annotation. Our method estimates building height using building shadows and satellite image metadata given a single RGB satellite image. To reduce the data annotation needed, we design a multi-stage instance detection method for building and shadow detection with both supervised and semi-supervised training. Given the detected building and shadow instances, we can then estimate the building height with satellite image metadata. Building height estimation is done by maximizing the overlap between the projected shadow region given a query height and the detected shadow region. We evaluate our method on the xView2 and Urban Semantic 3D datasets and show that the proposed method achieves accurate building detection, shadow detection, and height estimation.
Databáze: OpenAIRE