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Reducing the Dimensions of Texture Features for Image Retrieval Using Multi-layer Neural Networks

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Abstract:

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% while kee** 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.

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Receiveed: 6 July 1998¶,Received in revised form: 6 November 1998¶Accepted: 15 December 1998

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Antonio Catalan, J., **, J. & Gedeon, T. Reducing the Dimensions of Texture Features for Image Retrieval Using Multi-layer Neural Networks. Pattern Analysis & Applications 2, 196–203 (1999). https://doi.org/10.1007/s100440050028

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  • DOI: https://doi.org/10.1007/s100440050028

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