摘要
采用连续型Hopfield神经网络(CHNN)对噪声字符进行识别。此模型比离散型Hopfield神经网络(DHNN)和布尔神经网络(BNN)更易于硬件实现,且在信息处理的并行性和实时性等方面更接近实际生物神经网络的工作原理。仿真结果表明该方法可以有效地对噪声字符进行识别。
In this paper,the method based on Continuous Hopfield Neural Network(CHNN)to identify noised words is presented. This model is easier to be implemented by hardware, and closer to the principle of practical neural network at the parallelity and real-time of signal processing than DHNN and BNN models.The results of simulation show this method can identify the noised words efficaciously.
出处
《系统仿真学报》
CAS
CSCD
2003年第9期1288-1290,共3页
Journal of System Simulation