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Comparison of linear dimensionality reduction methods in image annotation

机译:图像标注中线性降维方法的比较

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Dimension reduction methods are often used to analyzing high dimensional data, linear dimension methods are commonly used due to their simple geometric interpretations and for effective computational cost. Dimension reduction plays an important role for feature selection. In this paper, we have given a detailed comparison of state-of-the-art linear dimension reduction methods like principal component analysis (PCA), random projections (RP), and locality preserving projections (LPP). We have determined which dimension reduction method performs better under the FastTag Image annotation framework. Experiments are conducted on three standard bench mark image datasets such as CorelSk, IAPRTC-12 and ESP game to compare the efficiency, effectiveness and also memory usage. A detailed comparison among the aforementioned dimension reduction method is given.
机译:降维方法通常用于分析高维数据,由于其简单的几何解释和有效的计算成本,通常使用线性维方法。降维在特征选择中起着重要作用。在本文中,我们对最先进的线性降维方法(如主成分分析(PCA),随机投影(RP)和局部性保留投影(LPP))进行了详细的比较。我们已经确定在FastTag图像注释框架下哪种降维方法效果更好。在三个标准基准图像数据集(例如CorelSk,IAPRTC-12和ESP游戏)上进行了实验,以比较效率,效果以及内存使用情况。给出了上述尺寸减小方法之间的详细比较。

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