基于相关反馈的粒子群图像检索

F. Jafarinejad, R. Farzbood
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引用次数: 0

摘要

在许多基于内容的图像系统中,图像检索是一项基本任务。在基于相关性反馈的图像检索系统中,在保持计算时间的同时实现高精度是非常重要的。本文将其与图像分类任务进行了类比。因此,在图像检索问题中,我们将获得一个优化的决策面,该决策面将数据集图像分离为与查询图像相对应的两类相关/不相关图像。这个问题将被看作是一个使用粒子优化算法的优化问题。尽管粒子群优化算法在图像检索领域得到了广泛的应用,但没有人将其直接用于特征加权。从用户反馈中提取的信息将引导粒子,以便找到图像的各种特征(基于颜色、形状或纹理的特征)的最佳权重。这些非常不同质的特征的融合需要一种特征加权算法,该算法将在PSO算法的帮助下进行。因此,提出了一种创新的适应度函数来评估每个粒子的位置。在Wang数据集和Corel-10k上的实验结果表明,该方法的平均精度高于其他半自动和自动方法。此外,与其他基于粒子群算法的图像检索方法相比,该方法降低了计算复杂度。
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Relevance Feedback-based Image Retrieval using Particle Swarm Optimization
Image retrieval is a basic task in many content-based image systems. Achieving high precision, while maintaining computation time is very important in relevance feedback-based image retrieval systems. This paper establishes an analogy between this and the task of image classification. Therefore, in the image retrieval problem, we will obtain an optimized decision surface that separates dataset images into two categories of relevant/irrelevant images corresponding to the query image. This problem will be viewed and solved as an optimization problem using particle optimization algorithm. Although the particle swarm optimization (PSO) algorithm is widely used in the field of image retrieval, no one use it for directly feature weighting. Information extracted from user feedbacks will guide particles in order to find the optimal weights of various features of images (Color-, shape- or texture-based features). Fusion of these very non-homogenous features need a feature weighting algorithm that will take place by the help of PSO algorithm. Accordingly, an innovative fitness function is proposed to evaluate each particle’s position. Experimental results on Wang dataset and Corel-10k indicate that average precision of the proposed method is higher than other semi-automatic and automatic approaches. Moreover, the proposed method suggest a reduction in the computational complexity in comparison to other PSO-based image retrieval methods.
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