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BP神经网络对驻极体麦克图像特征识别的研究 被引量:2

Research on Image Feature Recognition of Electret Condenser Microphone Using BP Neural Network
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摘要 人工神经网络是特征识别的有力工具。在研究对驻极体麦克图像识别方法的基础上,本文提出了一种用改进的BP神经网络进行图像特征的识别和学习算法,并给出了动量系数和学习率的调整方法。对比传统方法测定的结果,使用改进的BP神经网络在识别不规则特征时:减少了输入信息冗余,网络结构相对简单;神经网络输出的各项指标明显提高了精度,对麦克图像特征的平均识别正确率达到92.7%;识别速度也满足在线实时检测的要求。理论分析和实验均表明该算法能实时有效地检测出驻极体麦克图像的特性。本文为研究图像不规则特征的识别提供了一种新的方法。 Artificial neural network is a powerful tool for feature recognition. On the basis of studying recognition method for image of electret condenser microphone, this paper presents an improved BP learning, algorithm for recognizing the image features using neural network, and the method for adjusting momentum vector and learning rate is discussed. Compared with the inspecting result of traditional methods, such as those based on Muhilayer Perceptron (MLP) or Radial - Basis Function neural network ( RBF), the ameliorated BP neural network recognition method presented in this paper has a relatively simple network structure and less input information redundancy for irregular feature recognition, the accuracy of the neural network output indexes is improved obviously. The average correct rate of microphone image recognition reaches to 92.7% and the recognition speed meets the requirement of online real - time detection. Theoretical evaluation and simulation experiments show that the improved BP neural network can effectively detect the image feature of electret condenser microphone. The paper provides a new approach for studying irregular image feature recognition.
出处 《电子测量与仪器学报》 CSCD 2007年第2期26-30,共5页 Journal of Electronic Measurement and Instrumentation
关键词 特征识别 神经网络 BP学习算法 feature recognition, neural network, BP learning algorithm.
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  • 1杨绿溪,何振亚.一种快速的动态Hough变换及其并行实现[J].东南大学学报(自然科学版),1993,23(3):1-8. 被引量:2
  • 2颜延虎,钟秉林,黄仁,万德均.神经网络技术及其在旋转机械故障诊断中的应用[J].振动工程学报,1993,6(3):205-212. 被引量:23
  • 3田村秀行.计算机图像处理技术[M].北京:北京师范大学出版社,1988..
  • 4蔡煜东 等.土壤侵蚀预报的人工神经网络方法[A]..第三届全国农业知识工程学术会议论文集[C].,1993.61-64.
  • 5朱志刚.数字图像处理基础.北京:清华大学计算机系教材[M].,1994..
  • 6Hough P V C. Method and means of.
  • 7recognizing complex patterns. U.S.Patent 3069654,1962.
  • 8Xu L, etal. Pattern Recognition Letters, 1990,11(5).
  • 9Xu L, etal. Computer Vision Graphics Image Process: Image Understanding, 1993,57(2).
  • 10Leavers V F. The dynamic generalized Hough transform .SPIE, Science Analysis Ⅱ,1990.

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  • 1彭淑敏,王军宁.基于神经网络的图像识别方法[J].电子科技,2005,18(1):38-41. 被引量:21
  • 2万来毅,陈建勋,王卫平,李俊.基于BP神经网络的图像识别研究[J].武汉科技大学学报,2006,29(3):277-279. 被引量:12
  • 3李洪兴.因素空间理论与知识表示的数学框架(Ⅰ)──因素空间的公理化定义与描述架[J].北京师范大学学报(自然科学版),1996,32(4):470-475. 被引量:66
  • 4张伟,王克俭,秦臻.基于神经网络的数字识别的研究[J].微电子学与计算机,2006,23(8):206-208. 被引量:23
  • 5CASTILLO E. Functional networks[J].Neural Processing Letters, 1998, 7: 151-159
  • 6CASTIL E, COBO A, GUTIERREZ J M. Functional networks with applications [J]. Kluwer Academic Publishers, 1999.
  • 7CASTILLO E, GUTIERREZ J M, COBO A, et al.A minimax method for learning functional networks[J]. Neural Processing Letters, 2000, 11(1): 39-49.
  • 8ALFONSO I, ARCAY B, COTOS J, et al. A comparison between functional networks and artificial neural net-works for the prediction of fishing catehes[J]. Neural Comp. & Appl., 2004, 13(1): 24-31
  • 9ZHOU Y Q, CAO D Q, JIAO L H. Multi-dimensional functions approximation of polynomial functional net- works [J]. GESTS international Transactions on Computer Science and Engineering, 2005, 21(1): 161-169.
  • 10CASTILLO E, COBO A, GUTIERREZ J M. Working with differential functional and difference equations using functional networks[J]. Appl. Math. Model, 1999, 23: 89-107.

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