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An Emotion-Oriented Image Search System with Cluster based Similarity Measurement using Pillar-Kmeans Algorithm

机译:一种基于情绪的图像搜索系统,该系统使用Pillar-Kmeans算法进行基于聚类的相似度测量

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This paper presents an image search system with an emotion-oriented context recognition mechanism. Our motivation implementing an emotional context is to express user's impressions for retrieval process in the image search system. This emotional context recognizes the most important features by connecting the user's impressions to the image queries. The Mathematical Model of Meaning (MMM: [2], [4] and [5]) is applied for recognizing a series of emotional contexts for retrieving the most highly correlated impressions to the context. These impressions are then projected to a color impression metric to obtain the most significant colors for subspace feature selection. After applying subspace feature selection, the system then clusters the subspace color features of the image dataset using our proposed Pillar-Kmeans algorithm. Pillar algorithm is an algorithm to optimize the initial centroids for K-means clustering. This algorithm is very robust and superior for initial centroids optimization for K-means by positioning all centroids far separately among them in the data distribution. It is inspiring that by distributing the pillars as far as possible from each other within the pressure distribution of a roof, the pillars can withstand the roofs pressure and stabilize a house or building. It considers the pillars which should be located as far as possible from each other to withstand against the pressure distribution of a roof, as number of centroids among the gravity weight of data distribution in the vector space. Therefore, this algorithm designates positions of initial centroids in the farthest accumulated distance between them in the data distribution. The cluster based similarity measurement also involves a semantic filtering mechanism. This mechanism filters out the unimportant image data items to the context in order to speed up the computational execution for image search process. The system then clusters the image dataset using our Pillar-Kmeans algorithm. The centroids of clustering results are used for calculating the similarity measurements to the image query. We perform our proposed system for experimental purpose with the Ukiyo-e image dataset from Tokyo Metropolitan Library for representing the Japanese cultural image collections.
机译:本文提出了一种具有面向情感的上下文识别机制的图像搜索系统。我们实现情感环境的动机是在图像搜索系统中表达用户对检索过程的印象。通过将用户的印象与图像查询联系起来,这种情感环境可以识别出最重要的功能。意义的数学模型(MMM:[2],[4]和[5])用于识别一系列情感语境,以检索与语境最相关的印象。然后,将这些印象投影到颜色印象度量,以获得用于子空间特征选择的最重要的颜色。应用子空间特征选择后,系统随后使用我们提出的Pillar-Kmeans算法对图像数据集的子空间颜色特征进行聚类。支柱算法是一种针对K均值聚类优化初始质心的算法。通过在数据分布中将所有质心分开放置,该算法对于K均值的初始质心优化非常强大且优越。令人鼓舞的是,通过在屋顶的压力分布内尽可能远地分布支柱,支柱可以承受屋顶的压力并稳定房屋或建筑物。它考虑到支柱之间的距离应尽可能远,以抵御屋顶的压力分布,这是向量空间中数据分布的重力分量中的质心数。因此,该算法在数据分布中将初始质心的位置指定为它们之间最远的累积距离。基于聚类的相似性度量还涉及语义过滤机制。该机制将不重要的图像数据项过滤到上下文中,以加快图像搜索过程的计算执行速度。然后,系统使用我们的Pillar-Kmeans算法对图像数据集进行聚类。聚类结果的质心用于计算与图像查询的相似性度量。我们使用东京都图书馆的浮世绘图像数据集来执行我们提出的用于实验目的的系统,以代表日本的文化图像集。

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