Xu Minghai, Cao Li, Lu Dongwan, Hu Zhongyi, Yue Yinggao
School of Intelligent Manufacturing and Electronic Engineering, Wenzhou University of Technology, Wenzhou 325035, China.
Intelligent Information Systems Institute, Wenzhou University, Wenzhou 325035, China.
Biomimetics (Basel). 2023 Jun 3;8(2):235. doi: 10.3390/biomimetics8020235.
Image processing technology has always been a hot and difficult topic in the field of artificial intelligence. With the rise and development of machine learning and deep learning methods, swarm intelligence algorithms have become a hot research direction, and combining image processing technology with swarm intelligence algorithms has become a new and effective improvement method. Swarm intelligence algorithm refers to an intelligent computing method formed by simulating the evolutionary laws, behavior characteristics, and thinking patterns of insects, birds, natural phenomena, and other biological populations. It has efficient and parallel global optimization capabilities and strong optimization performance. In this paper, the ant colony algorithm, particle swarm optimization algorithm, sparrow search algorithm, bat algorithm, thimble colony algorithm, and other swarm intelligent optimization algorithms are deeply studied. The model, features, improvement strategies, and application fields of the algorithm in image processing, such as image segmentation, image matching, image classification, image feature extraction, and image edge detection, are comprehensively reviewed. The theoretical research, improvement strategies, and application research of image processing are comprehensively analyzed and compared. Combined with the current literature, the improvement methods of the above algorithms and the comprehensive improvement and application of image processing technology are analyzed and summarized. The representative algorithms of the swarm intelligence algorithm combined with image segmentation technology are extracted for list analysis and summary. Then, the unified framework, common characteristics, different differences of the swarm intelligence algorithm are summarized, existing problems are raised, and finally, the future trend is projected.
图像处理技术一直是人工智能领域的一个热点和难点话题。随着机器学习和深度学习方法的兴起与发展,群体智能算法成为了一个热门的研究方向,将图像处理技术与群体智能算法相结合已成为一种新的有效改进方法。群体智能算法是指通过模拟昆虫、鸟类、自然现象等生物群体的进化规律、行为特征和思维模式而形成的一种智能计算方法。它具有高效的并行全局优化能力和强大的优化性能。本文对蚁群算法、粒子群优化算法、麻雀搜索算法、蝙蝠算法、针箍算法等群体智能优化算法进行了深入研究。全面综述了这些算法在图像处理中的模型、特点、改进策略以及应用领域,如图像分割、图像匹配、图像分类、图像特征提取和图像边缘检测等。对图像处理的理论研究、改进策略和应用研究进行了全面的分析和比较。结合当前文献,对上述算法的改进方法以及图像处理技术的综合改进与应用进行了分析和总结。提取了群体智能算法与图像分割技术相结合的代表性算法进行列表分析和总结。然后,总结了群体智能算法的统一框架、共同特点、不同差异,提出了存在的问题,最后对未来趋势进行了展望。