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Bridging the semantic gap for automatic image annotation by learning the manifold space

机译:通过学习流形空间弥合语义鸿沟,实现自动图像标注

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摘要

Automatic image annotation has been an active research topic in recent years due to its potential impact on image understanding and web image mining. In this regard, image feature vectors consist of low level features like color, texture, shape and object spatial relations. But in many situations the similarity between two images could not be found correctly by the Euclidean distance. The aim of basic non-linear methods in feature extraction is to find the intrinsic dimensions where each dimension indicates a latent feature. The purpose of this study is to reduce the dimensions of feature vectors by a non-linear approach, named manifold learning, and develop a new feature vector to coincide semantic and Euclidean distance. So, the continuity between the instances of a semantic at the semantic space is kept in feature space. Keeping the continuity at feature space is the main approach to decrease the semantic gap in this study. The experiments showed that the geometrical distances between the samples in this approach are closer to their semantic distance. The proposed method has been compared to the other well-known approaches on Corel and IAPR-TC12 datasets. The results confirmed the effectiveness and validity of the proposed method.
机译:近年来,由于自动图像注释对图像理解和Web图像挖掘的潜在影响,自动图像注释已成为活跃的研究主题。在这方面,图像特征向量由低级特征组成,例如颜色,纹理,形状和对象空间关系。但是在许多情况下,通过欧几里得距离无法正确找到两个图像之间的相似性。特征提取中基本非线性方法的目的是找到每个维度都表示潜在特征的固有维度。这项研究的目的是通过一种称为流形学习的非线性方法来减少特征向量的维数,并开发出一种新的特征向量来使语义和欧几里得距离重合。因此,语义空间中语义实例之间的连续性保持在特征空间中。在特征空间中保持连续性是减少语义差距的主要方法。实验表明,这种方法在样本之间的几何距离更接近其语义距离。该提议的方法已与Corel和IAPR-TC12数据集上的其他众所周知的方法进行了比较。结果证实了该方法的有效性和有效性。

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