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Combining Visual and Textual Systems within the Context of User Feedback

机译:在用户反馈的上下文中结合视觉和文本系统

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It has been proven experimentally, that a combination of textual and visual representations can improve the retrieval performance ([20], [23]). It is due to the fact, that the textual and visual feature spaces often represent complementary yet correlated aspects of the same image, thus forming a composite system. In this paper, we present a model for the combination of visual and textual sub-systems within the user feedback context. The model was inspired by the measurement utilized in quantum mechanics (QM) and the tensor product of cooccurrence (density) matrices, which represents a density matrix of the composite system in QM. It provides a sound and natural framework to seamlessly integrate multiple feature spaces by considering them as a composite system, as well as a new way of measuring the relevance of an image with respect to a context. The proposed approach takes into account both intra (via co-occurrence matrices) and inter (via tensor operator) relationships between features' dimensions. It is also computationally cheap and scalable to large data collections. We test our approach on ImageCLEF2007photo data collection and present interesting findings.
机译:实验已经证明,文本和视觉表示的组合可以提高检索性能([20],[23])。由于这一事实,文本和视觉特征空间通常代表同一图像的互补但相关的方面,因此形成了一个复合系统。在本文中,我们为用户反馈上下文中的视觉和文本子系统的组合提出了一个模型。该模型的灵感来自于量子力学(QM)中使用的测量以及共现(密度)矩阵的张量积,该矩阵表示QM中复合系统的密度矩阵。它提供了一个合理自然的框架,通过将多个特征空间视为一个复合系统来无缝集成它们,并提供了一种测量图像相对于上下文的相关性的新方法。所提出的方法考虑了特征尺寸之间的内部(通过共现矩阵)和内部(通过张量算子)关系。它在计算上也很便宜,并且可以扩展到大数据收集。我们在ImageCLEF2007photo数据收集上测试了我们的方法,并提出了有趣的发现。

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