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Factors Affecting Rocchio-Based Pseudorelevance Feedback in Image Retrieval

机译:图像检索中影响基于Rocchio的伪相关反馈的因素

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Pseudorelevance feedback (PRF) was proposed to solve the limitation of relevance feedback (RF), which is based on the user-in-the-loop process. In PRF, the top-k retrieved images are regarded as PRF. Although the PRF set contains noise, PRF has proven effective for automatically improving the overall retrieval result. To implement PRF, the Rocchio algorithm has been considered as a reasonable and well-established baseline. However, the performance of Rocchio-based PRF is subject to various representation choices (or factors). In this article, we examine these factors that affect the performance of Rocchio-based PRF, including image-feature representation, the number of top-ranked images, the weighting parameters of Rocchio, and similarity measure. We offer practical insights on how to optimize the performance of Rocchio-based PRF by choosing appropriate representation choices. Our extensive experiments on NUS-WIDE-LITE and Caltech 101 + Corel 5000 data sets show that the optimal feature representation is color moment + wavelet texture in terms of retrieval efficiency and effectiveness. Other representation choices are that using top-20 ranked images as pseudopositive and pseudonegative feedback sets with the equal weight (i.e., 0.5) by the correlation and cosine distance functions can produce the optimal retrieval result.
机译:提出了基于用户在环过程的伪相关反馈(PRF)来解决相关反馈(RF)的局限性。在PRF中,将前k个检索到的图像视为PRF。尽管PRF集包含噪声,但事实证明PRF可有效地自动改善总体检索结果。为了实现PRF,Rocchio算法已被认为是合理且公认的基线。但是,基于Rocchio的PRF的性能取决于各种表示形式的选择(或因素)。在本文中,我们研究了影响基于Rocchio的PRF性能的因素,包括图像特征表示,排名靠前的图像数量,Rocchio的加权参数以及相似性度量。我们提供有关如何通过选择适当的表示形式选择来优化基于Rocchio的PRF性能的实用见解。我们在NUS-WIDE-LITE和Caltech 101 + Corel 5000数据集上进行的广泛实验表明,就检索效率和有效性而言,最佳特征表示是色矩+小波纹理。其他表示选择是通过相关性和余弦距离函数将前20名排名最高的图像用作权重相等(即0.5)的伪正和伪负反馈集。

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    Department of Information Management, National Central University, Jhongli, Taiwan, Republic of China;

    Department of Information Management, National Chung Cheng University, Chia-Yi, Taiwan, Republic of China;

    Department of Information Management, National Central University, Jhongli, Taiwan, Republic of China;

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