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A Stochastic Approach to Image Retrieval Using Relevance Feedback and Particle Swarm Optimization

机译:相关反馈和粒子群算法的图像随机检索

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摘要

Understanding the subjective meaning of a visual query, by converting it into numerical parameters that can be extracted and compared by a computer, is the paramount challenge in the field of intelligent image retrieval, also referred to as the “semantic gap” problem. In this paper, an innovative approach is proposed that combines a relevance feedback (RF) approach with an evolutionary stochastic algorithm, called particle swarm optimizer (PSO), as a way to grasp user''s semantics through optimized iterative learning. The retrieval uses human interaction to achieve a twofold goal: 1) to guide the swarm particles in the exploration of the solution space towards the cluster of relevant images; 2) to dynamically modify the feature space by appropriately weighting the descriptive features according to the users'' perception of relevance. Extensive simulations showed that the proposed technique outperforms traditional deterministic RF approaches of the same class, thanks to its stochastic nature, which allows a better exploration of complex, nonlinear, and highly-dimensional solution spaces.
机译:通过将视觉查询转换为可以由计算机提取和比较的数值参数来理解视觉查询的主观含义,这是智能图像检索领域中的首要挑战,也称为“语义鸿沟”问题。在本文中,提出了一种创新方法,该方法将相关反馈(RF)方法与进化随机算法(称为粒子群优化器(PSO))相结合,作为通过优化的迭代学习来掌握用户语义的方法。该检索使用人机交互来实现双重目标:1)引导解决空间探索中的粒子群朝向相关图像簇; 2)通过根据用户的相关性感知适当权衡描述性特征来动态修改特征空间。大量的仿真表明,由于其随机性,所提出的技术优于同类的传统确定性RF方法,从而可以更好地探索复杂,非线性和高维解空间。

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