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Reducing the Dimensions of Texture Features for image retrieval Using Multi- Layer Neural Networks

机译:减少使用多层神经网络进行图像检索的纹理特征的尺寸

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摘要

This paper presents neural network-based dimension reduction of texture features in content-based image retrieval. In particular, we highlight the usefulness of hetero-associative neural networks to this task, and also propose a scheme to combine the hetero-associative and auto-associative functions. A multichannel Gabor-filtering approach is used to derive 30-dimensional texture features from a set of homogeneous texture images. Multi-layer feedforward neural networks are then trained to reduce the number of feature dimensions. Our results show that the methods lead to a reduction of up to 30/100 while keeping or even improving the performance of similarity ranking. This has the benefit of alleviating the ill-effects of the high dimensionality of features in current image indexing methods and resulting In significant speeding up retrieval rates. Results using principal component analysis are also provided for comparison.
机译:本文提出了基于内容的图像检索中基于神经网络的纹理特征降维。特别是,我们强调了异质联想神经网络对该任务的实用性,并提出了一种将异质联想和自体联想功能相结合的方案。多通道Gabor滤波方法用于从一组同质纹理图像中导出30维纹理特征。然后训练多层前馈神经网络以减少特征维数。我们的结果表明,这些方法最多可降低30/100,同时保持甚至提高相似性排名的性能。这具有减轻当前图像索引方法中特征的高维数的不良影响并显着加快检索速度的好处。还提供了使用主成分分析的结果以进行比较。

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