CVLGIVAug 25, 2021

Deep few-shot learning for bi-temporal building change detection

arXiv:2108.11262v24 citations
AI Analysis

This addresses the challenge of expensive and time-consuming manual annotation for building change detection in applications like map updating, though it appears incremental as it builds on existing few-shot learning approaches.

The paper tackles the problem of building change detection from bi-temporal remote sensing images by proposing a new deep few-shot learning method using Monte Carlo dropout, which is designed to work effectively with small labeled datasets.

In real-world applications (e.g., change detection), annotating images is very expensive. To build effective deep learning models in these applications, deep few-shot learning methods have been developed and prove to be a robust approach in small training data. The analysis of building change detection from high spatial resolution remote sensing observations is important research in photogrammetry, computer vision, and remote sensing nowadays, which can be widely used in a variety of real-world applications, such as map updating. As manual high resolution image interpretation is expensive and time-consuming, building change detection methods are of high interest. The interest in developing building change detection approaches from optical remote sensing images is rapidly increasing due to larger coverages, and lower costs of optical images. In this study, we focus on building change detection analysis on a small set of building change from different regions that sit in several cities. In this paper, a new deep few-shot learning method is proposed for building change detection using Monte Carlo dropout and remote sensing observations. The setup is based on a small dataset, including bitemporal optical images labeled for building change detection.

Foundations

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