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The influence of hubness on nearest-neighbor methods in object recognition

机译:毂性对物体识别中最近邻法的影响

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Object recognition from images is one of the essential problems in automatic image processing. In this paper we focus specifically on nearest neighbor methods, which are widely used in many practical applications, not necessarily related to image data. It has recently come to attention that high dimensional data also exhibit high hubness, which essentially means that some very influential data points appear and these points are referred to as hubs. Unsurprisingly, hubs play a very important role in the nearest neighbor classification. We examine the hubness of various image data sets, under several different feature representations. We also show that it is possible to exploit the observed hubness and improve the recognition accuracy.
机译:来自图像的对象识别是自动图像处理中的基本问题之一。在本文中,我们专注于最近的邻近方法,这些方法广泛用于许多实际应用,不一定与图像数据相关。最近提到注意,高维数据也表现出高载体,这基本上意味着出现一些非常有影响力的数据点,这些点被称为集线器。不出所料,集线器在最近的邻居分类中发挥着非常重要的作用。我们在几个不同的特征表示下检查各种图像数据集的集线器。我们还表明,可以利用观察到的封闭性并提高识别准确性。

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