An Overview on the Latest Nature-Inspired and Metaheuristics-Based Image Registration Algorithms
Fecha
2020-03-11
Título de la revista
ISSN de la revista
Título del volumen
Editor
MDPI (Switzerland)
Resumen
The development of automated image registration (IR) methods is a well-known
issue within the computer vision (CV) field and it has been largely addressed from multiple
viewpoints. IR has been applied to a high number of real-world scenarios ranging from remote
sensing to medical imaging, artificial vision, and computer-aided design. In the last two decades,
there has been an outstanding interest in the application of new optimization approaches for dealing
with the main drawbacks present in the early IR methods, e.g., the Iterative Closest Point (ICP)
algorithm. In particular, nature-inspired computation, e.g., evolutionary computation (EC), provides
computational models that have their origin in evolution theories of nature. Moreover, other general
purpose algorithms known as metaheuristics are also considered in this category of methods.
Both nature-inspired and metaheuristic algorithms have been extensively adopted for tackling
the IR problem, thus becoming a reliable alternative for optimization purposes. In this contribution,
we aim to perform a comprehensive overview of the last decade (2009–2019) regarding the successful
usage of this family of optimization approaches when facing the IR problem. Specifically, twenty-four
methods (around 16 percent) of more than one hundred and fifty different contributions in the
state-of-the-art have been selected. Several enhancements have been accordingly provided based on
the promising outcomes shown by specific algorithmic designs. Finally, our research has shown that
the field of nature-inspired and metaheuristic algorithms has increased its interest in the last decade
to address the IR problem, and it has been highlighted that there is still room for improvement
Descripción
El trabajo corresponde a una publicación con invitación realizada por la revista, en cuya elaboración participaron miembros del equipo de investigación PAIDI de la Universidad de Jaén "Ingeniería Computacional Aplicada", cuyo responsable es el primer autor de la publicación. La investigación corresponde a una línea de investigación desarrollada por el autor desde 2003.
Palabras clave
Metaheuristics, Image registration, Computer vision, Evolutionary computation
Citación
Santamaría, J.; Rivero-Cejudo, M.L.; Martos-Fernández, M.A.; Roca, F. An Overview on the Latest Nature-Inspired and Metaheuristics-Based Image Registration Algorithms. Appl. Sci. 2020, 10, 1928. https://doi.org/10.3390/app10061928