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Automatic Image Annotation Using Random Projection in a Conceptual Space Induced from Data

机译:在数据诱导的概念空间中使用随机投影进行自动图像注释

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The main drawback of a detailed representation of visual content, whatever is its origin, is that significant features are very high dimensional. To keep the problem tractable while preserving the semantic content, a dimensionality reduction of the data is needed. We propose the Random Projection techniques to reduce the dimensionality. Even though this technique is sub-optimal with respect to Singular Value Decomposition its much lower computational cost make it more suitable for this problem and in particular when computational resources are limited such as in mobile terminals. In this paper we present the use of a “conceptual” space, automatically induced from data, to perform automatic image annotation. Images are represented by visual features based on color and texture and arranged as histograms of visual terms and bigrams to partially preserve the spatial information [1]. Using a set of annotated images as training data, the matrix of visual features is built and dimensionality reduction is performed using the Random Projection algorithm. A new unannotated image is then projected into the dimensionally reduced space and the labels of the closest training images are assigned to the unannotated image itself. Experiments on large real collection of images showed that the approach, despite of its low computational cost, is very effective.
机译:无论其来源如何,对视觉内容进行详细表示的主要缺点是重要特征的尺寸非常高。为了在保留语义内容的同时使问题易于处理,需要减少数据的维数。我们提出了随机投影技术来减少维数。即使该技术相对于奇异值分解而言不是次优的,其低得多的计算成本也使其更适用于此问题,尤其是在诸如移动终端中的计算资源有限的情况下。在本文中,我们介绍了根据数据自动引入的“概念”空间的使用,以执行自动图像注释。图像由基于颜色和纹理的视觉特征表示,并排列为视觉术语和二元图的直方图,以部分保留空间信息[1]。使用一组带注释的图像作为训练数据,构建视觉特征矩阵,并使用随机投影算法执行降维。然后将新的未注释图像投影到尺寸缩小的空间中,并将最接近的训练图像的标签分配给未注释图像本身。在大量实际图像上进行的实验表明,该方法尽管计算成本较低,但却非常有效。

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