ARTgrid: A Two-Level Learning Architecture Based on Adaptive Resonance Theory (CROSBI ID 213604)
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Podaci o odgovornosti
Švaco, Marko ; Jerbić, Bojan ; Šuligoj Filip
engleski
ARTgrid: A Two-Level Learning Architecture Based on Adaptive Resonance Theory
This paper proposes a novel neural network architecture based on adaptive resonance theory (ART) called ARTgrid that can perform both online and offline clustering of 2D object structures. The main novelty of the proposed architecture is a two-level categorization and search mechanism that can enhance computation speed while maintaining high performance in cases of higher vigilance values. ARTgrid is developed for specific robotic applications for work in unstructured environments with diverse work objects. For that reason simulations are conducted on random generated data which represents actualmanipulation objects, that is, their respective 2D structures. ARTgrid verification is done through comparison in clustering speed with the fuzzy ART algorithm and Adaptive Fuzzy Shadow (AFS) network. Simulation results show that by applying higher vigilance values clustering performance of ARTgrid is considerably better, while lower vigilance values produce comparable results with the original fuzzy ART algorithm.
Machine learning; Adaptive resonance theory; ARTgrid
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Podaci o izdanju
2014
2014.
1-9
objavljeno
1687-7594
1687-7608
10.1155/2014/185492