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A latent semantic analysis-based image tag optimisation method

机译:基于潜在语义分析的图像标签优化方法

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摘要

According to the nominal tags, the adverb and adjective high-level semantic tags which is described human emotion are easily to exceed the handling scope. Furthermore, the majority of optimisation methods exists many problems (e.g., although inputting a high application cost, it cannot get a satisfactory effect). This paper proposed an effective image tag optimisation algorithm which was composed of two important parts: firstly, a random walk model was used to process the initial image tag information, the image relationship diagram and the tag relationship diagram were structured based on image vision similarity and tag relevancy respectively, then, the image and tag information was spread through a dual-diagram (image relationship diagram and tag relationship diagram) walk mode randomly; secondly, a new image tag optimisation model was built according to three factors, i.e., semantic uniformity, noise sparsity and result matrix sparsity. In the experimental stage, the effectiveness of this model and the superiority of pre-processing were verified by experiment. Compared to other methods, the experimental result indicates that this algorithm is more reasonable and efficient.
机译:根据名义标签,描述人类情感的副词和形容词高级语义标签很容易超出处理范围。此外,大多数优化方法存在许多问题(例如,尽管输入成本高,但不能获得令人满意的效果)。本文提出了一种有效的图像标签优化算法,该算法由两个重要部分组成:首先,使用随机游走模型处理初始图像标签信息,基于图像视觉相似度构建图像关系图和标签关系图;标签相关性,然后,通过双图(图像关系图和标签关系图)行走模式随机散布图像和标签信息。其次,根据语义一致性,噪声稀疏性和结果矩阵稀疏性三个因素,建立了新的图像标签优化模型。在实验阶段,通过实验验证了该模型的有效性和预处理的优越性。与其他方法相比,实验结果表明该算法更加合理,有效。

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