Paper
28 August 1995 Unsupervised/supervised hybrid networks for identification of TSS-1 satellite
Zhiling Wang, Andrea Guerriero, Marco De Sario, S. Losito
Author Affiliations +
Proceedings Volume 2620, International Conference on Intelligent Manufacturing; (1995) https://doi.org/10.1117/12.217493
Event: International Conference on Intelligent Manufacturing, 1995, Wuhan, China
Abstract
Neural networks have potential advantages such as real-time operation and robustness based on their parallel structure, self-organization, fuzziness, and particularly their adaptive learning ability. A single neural network is useful for identification of objects. To carry out identifying complex objects, however, it is necessary to consider hybrid architectures of two or more networks, which offer some degrees of improvement in performances. In this paper, neural learning techniques, the self-organizing feature mapping (SOFM), and learning vector quantization (LVQ2) have been applied to the automatic target recognition problem in the presence of a satellite object with high level noises. SOFM, unsupervised learning captures the homogeneity within-class characteristics; whereas LVQ2, supervised learning captures the heterogeneity of between-class.
© (1995) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Zhiling Wang, Andrea Guerriero, Marco De Sario, and S. Losito "Unsupervised/supervised hybrid networks for identification of TSS-1 satellite", Proc. SPIE 2620, International Conference on Intelligent Manufacturing, (28 August 1995); https://doi.org/10.1117/12.217493
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KEYWORDS
Neural networks

Satellites

Machine learning

Fuzzy logic

Quantization

Neurons

Object recognition

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