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Simplified theory of automatic feature extraction in a noniterative neural network pattern recognition system

机译:非迭代神经网络模式识别系统中自动特征提取的简化理论

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Abstract: Whenever the input training class patterns applied to a one- layered, hard-limited perceptron (OHP) satisfy a certain positive-linear-independence (PLI) condition, the learning of these patterns by the neural network can be done non- iteratively in a few algebraic steps and the recognition of the untrained test patterns can be very accurate and very robust if a special learning scheme - automatic feature extraction - is adopted in the learning mode. In this paper, we report the theoretical foundation, the simplified design analysis of this novel pattern recognition system, and the experiments we carried out with this novel system. The experimental result shows that the learning of four digitized training patterns is close to real-time, and the recognition of the untrained patterns is above 90 percent correct. The ultra-fast learning speed here is due to the non-iterative nature of the novel learning scheme we used in OHP. The high robustness in recognition here is due to the automatic feature extraction scheme we use in the learning mode. !29
机译:摘要:只要将应用于单层硬限制感知器(OHP)的输入训练类模式满足一定的正线性独立(PLI)条件,就可以通过神经网络非迭代地完成对这些模式的学习。如果在学习模式中采用特殊的学习方案(自动特征提取),则只需几个代数步骤,并且未经训练的测试模式的识别就可以非常准确且非常可靠。在本文中,我们报告了该新型模式识别系统的理论基础,简化的设计分析,以及我们在该新型系统上进行的实验。实验结果表明,四种数字化训练模式的学习接近实时,对未经训练的模式的识别正确率在90%以上。这里的超快学习速度是由于我们在OHP中使用的新颖学习方案的非迭代性质。这里识别的高鲁棒性归因于我们在学习模式中使用的自动特征提取方案。 !29

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