Generic object recognition by combining distinct features in machine learning


Meng, Hongying, Hardoon, David R., Shawe-Taylor, John and Szedmak, Sandor (2005) Generic object recognition by combining distinct features in machine learning. At SPIE, Applications of Neural Networks and Machine Learning in Image Processing IX,, San Jose, California , USA, 16 - 20 Jan 2005. SPIE—The International Society for Optical Engineering, 90-98.

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Description/Abstract

In a generic image object recognition or categorization system, the relevant features or descriptors from a characteristic point, patch or region of an image are often obtained by different approaches. These features are often separately selected and learned by machine learning methods. In this paper, the relation between distinct features obtained by different feature extraction approaches from the same original images was studied by Kernel Canonical Correlation Analysis (KCCA). We apply a Support Vector Machine (SVM) classifier in the learnt semantic space of the combined features and compare against SVM on the raw data and previously published state-of-the-art results. Experiment show that significant improvement is achieved with the SVM in the semantic space in comparison with direct SVM classification on the raw data.

Item Type: Conference or Workshop Item (Speech)
Additional Information: Event Dates: 16-20 January 2005
Keywords: KCCA, SVM, Data fusion, Image recognition
Divisions: Faculty of Physical and Applied Science > Electronics and Computer Science
Item ID: 260679
Date Deposited: 14 Mar 2005
Last Modified: 26 Apr 2013 03:23
Contributors: Meng, Hongying (Author)
Hardoon, David R. (Author)
Shawe-Taylor, John (Author)
Szedmak, Sandor (Author)
Nasrabadi, Nasser M. (Editor)
Rizvi, Syed A. (Editor)
Date: 2005
Additional Information: Event Dates: 16-20 January 2005
Status: Published
Publisher: SPIE—The International Society for Optical Engineering
Further Information:Google Scholar
ISI Citation Count:0
URI: http://eprints.soton.ac.uk/id/eprint/260679

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