Genetic Algorithms for the Optimization of Diffusion Parameters in Content-Based Image Retrieval

Federico Magliani, Laura Sani, S. Cagnoni, A. Prati
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引用次数: 10

Abstract

Several computer vision and artificial intelligence projects are nowadays exploiting the manifold data distribution using, e.g., the diffusion process. This approach has produced dramatic improvements on the final performance thanks to the application of such algorithms to the kNN graph. Unfortunately, this recent technique needs a manual configuration of several parameters, thus it is not straightforward to find the best configuration for each dataset. Moreover, the brute-force approach is computationally very demanding when used to optimally set the parameters of the diffusion approach. We propose to use genetic algorithms to find the optimal setting of all the diffusion parameters with respect to retrieval performance for each different dataset. Our approach is faster than others used as references (brute-force, random-search and PSO). A comparison with these methods has been made on three public image datasets: Oxford5k, Paris6k and Oxford105k.
基于内容的图像检索中扩散参数优化的遗传算法
目前,一些计算机视觉和人工智能项目正在利用诸如扩散过程之类的方法来开发多种数据分布。由于将这种算法应用于kNN图,这种方法在最终性能上产生了巨大的改进。不幸的是,这种最新的技术需要手动配置几个参数,因此不容易为每个数据集找到最佳配置。此外,当使用暴力方法来优化设置扩散方法的参数时,计算量非常高。我们建议使用遗传算法来找到关于每个不同数据集检索性能的所有扩散参数的最佳设置。我们的方法比其他参考方法(暴力破解、随机搜索和PSO)要快。在三个公共图像数据集Oxford5k、Paris6k和Oxford105k上对这些方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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