In this article, we present nature-inspired techniques for automatic image registration of multi-temporal satellite images. Multi-temporal satellite image registration is becoming increasingly important to aid in flood damage assessment. We consider two images in the registration process: one before-flood image and another during-flood image. The objective is to maximise the similarity metric (of these two images) using information theoretic measures such as mutual information (MI). The maximum MI would imply that the images are better registered. The function of these metrics for transformation parameters is generally non-convex and irregular and, therefore, makes it difficult to use standard optimisation methods for the global solution. In this study, nature-inspired techniques – genetic algorithm (GA), particle swarm optimisation (PSO) and firefly algorithm (FA) are used to search for the maximum MI. The multi-temporal images – Linear Imaging Self-Scanning Sensor III (LISS III) image (before flood) and...
Felipe Ferrari, Eliecer Duarte, Cecilia Smith‐Ramírez, Adriana Rendón-Funes, Virginia I. González, Nicolás Gonzalez, M F Levio, Rafael Rubilar, Alejandra Stehr, Carolina Merino, Ignacio Jofré, Claudia Rojas, Felipe Aburto, Yakov Kuzyakov, Ekaterina Filimonenko, José Dörner, Paulo A. A. Pereirâ, Francisco J. Matus
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