基于混合萤火虫算法和粒子群算法的无人机图像聚类检测

Marck Herzon C. Barrion, A. Bandala
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引用次数: 0

摘要

区分水面上的漂浮物可能是一项基本任务,当置于洪水灾害响应的背景下。这通常是通过使用多功能无人机来实现的。摄像机可能配备捕捉图像以供进一步评估。在处理这些问题时,自然启发的方法出现了,如FA和PSO。利用各自的优点和缺点,但可以通过提出的混合FA-PSO来解决。具体来说,FA既简单又健壮,但由于在存储最佳解决方案时缺乏内存,因此存在不足。这就是PSO的由来,它可以记录本地和全局最佳解决方案,并提供更快的收敛速度。该算法使用来自空中浮动物体数据集的图像进行了测试。结果表明,与传统算法相比,该算法在全局最优处收敛速度更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
UAV Image Clustering Detection of Floating Objects on Floods using Hybrid Firefly Algorithm and Particle Swarm Optimization
Distinguishing floating objects on the surface of the water may be an essential task when placed in the context of disaster responses for floods. This is usually employed by utilizing UAV s that are versatile. Cameras may be equipped to capture images for further assessment. In processing these, nature-inspired approaches have emerged such as the FA and PSO. Utilizing each on its own poses advantages and disadvantages but may be addressed by the proposed hybrid FA-PSO. Specifically, FA is simple and robust but falls short, given it lacks memory in storing the best solution. This is where PSO comes, where it can record both the local and the global best solution and provide faster convergence. The algorithm was tested using images from an aerial dataset for floating objects. Results show that the proposed algorithm was able to obtain faster convergence at the global optimum when compared to its traditional counterpart.
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