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Adaptive template reconstruction for effective pattern classification

Yang, Su, Hoque, Sanaul, Deravi, Farzin (2023) Adaptive template reconstruction for effective pattern classification. Sensors, 23 (15). Article Number 6707. E-ISSN 1424-8220. (doi:10.3390/s23156707) (KAR id:102353)

Abstract

A novel instance-based algorithm for pattern classification is presented and evaluated in this paper. This new method is motivated by the challenge of pattern classifications where only limited and/or noisy training data are available. For every classification, the proposed system transforms the query data and the training templates based on their distributions in the feature space. One of the major novelties of the proposed method is the concept of template reconstruction enabling improved performance with limited training data. The technique is compared with similar algorithms and evaluated using both the image and time-series modalities to demonstrate its effectiveness and versatility. Two public image databases, FASHION-MNIST and CIFAR-10, were used to test its effectiveness for the classification of images using small amounts of training samples. An average classification improvement of 2~3% was observed while using a small subset of the training database, compared to the performances achieved by state-of-the-art techniques using the full datasets. To further explore its capability in solving more challenging classification problems such as non-stationary time-series electroencephalography (EEG) signals, a clinical grade 64-electrode EEG database, as well as a low-quality (high-noise level) EEG database, obtained using a low-cost system equipped with a single dry sensor, have also been used to test the algorithm. Adaptive reconstruction of the feature instances has been seen to have substantially improved class separation and matching performance for both still images and time-series signals. In particular, the method is found to be effective for the classification of noisy non-stationary data with limited training data volumes, indicating its potential suitability for a wide range of applications.

Item Type: Article
DOI/Identification number: 10.3390/s23156707
Uncontrolled keywords: instance-based classification; pattern recognition; template reconstruction; image classification; time-series data
Subjects: Q Science
Divisions: Divisions > Division of Computing, Engineering and Mathematical Sciences > School of Engineering and Digital Arts
Funders: University of Kent (https://ror.org/00xkeyj56)
SWORD Depositor: JISC Publications Router
Depositing User: JISC Publications Router
Date Deposited: 08 Aug 2023 08:12 UTC
Last Modified: 11 Jan 2024 11:19 UTC
Resource URI: https://kar.kent.ac.uk/id/eprint/102353 (The current URI for this page, for reference purposes)

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