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      Detection and classification of underwater acoustic transients using neural networks

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          Generalizations of the Hausdorff dimension of fractal measures

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            Learned classification of sonar targets using a massively parallel network

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              Survey of neural network technology for automatic target recognition.

              M.W. Roth (1990)
              A review is presented of ATR (automatic target recognition), and some of the highlights of neural network technology developments that have the potential for making a significant impact on ATR are presented. In particular, neural network technology developments in the areas of collective computation, learning algorithms, expert systems, and neurocomputer hardware could provide crucial tools for developing improved algorithms and computational hardware for ATR. The discussion covers previous ATR system efforts. ATR issues and needs, early vision and collective computation, learning and adaptation for ATR, feature extraction, higher vision and expert systems, and neurocomputer hardware.
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                Author and article information

                Journal
                IEEE Transactions on Neural Networks
                IEEE Trans. Neural Netw.
                Institute of Electrical and Electronics Engineers (IEEE)
                10459227
                Sept. 1994
                : 5
                : 5
                : 712-718
                Article
                10.1109/72.317723
                7f7fc6f7-8da7-4711-8bf5-3c2677664895
                © 1994
                History

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