Towards misregistration-tolerant change detection using deep learning techniques with object-based image analysis

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Abstract

Co-registrating is a common pre-processing step for existing change detection algorithms, but registering bi-temporal images is nontrivial. The use of image patch as input for deep learning techniques provides a natural avenue to apply them in the OBIA framework, and have shown successful performance in the object-based land cover mapping and change detection applications. Even though attempts of applying deep learning techniques for change detection applications have been made with varying success, its application under OBIA framework for change detection have not been conducted and its tolerance for misregistration among temporal images are neither known. This study performed change detection under OBIA framework using deep learning techniques for the first time, and evaluated its performance regarding their tolerance of image misregistration on training and testing dataset. Our results demonstrate the proposed change detection scheme is surprisingly robust to image misregistration on the testing dataset, while classifiers trained with the training dataset containing image misregistration errors suffer from slight decrease of overall accuracy.

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Liu, T., Yang, L., & Lunga, D. D. (2019). Towards misregistration-tolerant change detection using deep learning techniques with object-based image analysis. In GIS: Proceedings of the ACM International Symposium on Advances in Geographic Information Systems (pp. 420–423). Association for Computing Machinery. https://doi.org/10.1145/3347146.3359068

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