Constraint satisfaction problem (CSP) has been actively used for modeling and solving a wide range of complex real-world problems. However, it has been proven that developing efficient methods for solving CSP, especially for large problems, is very difficult and challenging. Existing complete methods for problem-solving are in most cases unsuitable. Therefore, proposing hybrid CSP-based methods for problem-solving has been of increasing interest in the last decades. This paper aims at proposing a novel approach that combines incomplete and complete CSP methods for problem-solving. The proposed approach takes advantage of the group search algorithm (GSO) and the constraint propagation (CP) methods to solve problems related to the remote sensing field. To the best of our knowledge, this paper represents the first study that proposes a hybridization between an improved version of GSO and CP in the resolution of complex constraint-based problems. Experiments have been conducted for the resolution of object recognition problems in satellite images. Results show good performances in terms of convergence and running time of the proposed CSP-based method compared to existing state-of-the-art methods.
翻译:· 本文件旨在提出一种新颖的办法,把不完全和完整的CSP解决问题的方法结合起来;提议的办法利用集体搜索算法和限制传播方法解决与遥感领域有关的问题;根据我们所知,本文件是第一份研究报告,建议改进GSO和CP的版本,在解决基于制约的复杂问题方面,将GSO和CP混合起来;对解决卫星图像中的物体识别问题进行了实验;结果显示,拟议的CSP方法在趋同和运行时间方面与现有状态方法相比表现良好。