为提高利用脉冲耦合神经网络(pulse coupled neural network,PCNN)模型进行人脸识别时的准确率,并解决利用PCNN进行人脸识别时,模型中多个参数需凭经验设定的问题,提出一种基于脉冲发放强度的PCNN(QD-PCNN)模型和改进的网格搜索算法。QD-PCNN模型在简化的PCNN模型基础上,引入脉冲发放强度,细化模型的输出。改进的网格搜索算法在进行参数寻优时,根据识别对象,在较大范围内搜索,在得到的寻优结果附近区域进行精确搜索。在实验中,将通过改进的网格搜索法得到的参数组合运用到QD-PCNN模型中进行人脸识别,实验结果验证了该方法的有效性。
To improve the accuracy of face recognition using pulse coupled neural network (PCNN) model and solve the problem that the parameters of PCNN model must be set with experience, the PCNN model based on pulse intensity (QD-PCNN) and the improved grid search method were proposed. In the QI)-PCNN, the conception of pulse intensity was proposed, which made the outputs of the model more accurate. When the improved grid search method was used to find the suitable parameters, the parameters were searched in a large space, and the found parameters were searched precisely according to the objects to be recognized. In the experimental process, the parameters obtained through improved grid search method were applied to QD-PCNN model to recognize faces. Results show the efficiency of this method.