期刊文献+

基于改进神经网络的图像生物特征识别方法 被引量:8

Image Biometric Identification Method Based on Improved Neural Network
下载PDF
导出
摘要 在图像的固定生物特征识别过程中,传统的识别方法针对像素质量不高的问题,很难建立完整的寻优计算过程,识别效果不好。提出基于改进神经网络算法的图像特征识别方法。通过量子计算对神经网络进行优化,优化神经网络在特征识别中的阀值确定过程,完成图像识别。实验结果表明,利用改进的算法进行图像特征识别,能够极大的提高生物特征识别的准确性,扩展了应用的范围。 In the process of image fixed biometric recognition, the traditional identification methods aiming at the problem of pixel quality is not high, it is difficult to establish a complete optimization calculation process, recognition effect is bad.Based on improved neural network algorithm of image feature recognition method. Optimize the neural network, through the calculation of quantum optimization neural network in the process of the determination of the threshold feature recognition,image recognition. Experimental results show that the improved algorithm is used to identify the image characteristics, can greatly improve the accuracy of biometrics, extend the scope of application.
作者 曾爱林
出处 《科技通报》 北大核心 2015年第2期224-226,共3页 Bulletin of Science and Technology
基金 佛山市产学研专项资金项目(2012HC100303)
关键词 视觉图像 改进神经网络算法 特征识别 visual images Improved neural network algorithm Feature recognition
  • 相关文献

参考文献5

  • 1Shepherd F D,Mooney J M,Reeves T E,et al.Adaptive MWIR spectral imaging sensor[J].Proceedings of SPIE(S0277-786X),2008,7055:7055061-7055068.
  • 2Srikant Chari,Carl Halford,Eddie Jacobs,et al.Multispectral MWIR image classification using filters derived from Independent Component Analysis[J].Proceedings of SPIE(S0277-786X),2007,65760B:65760B-65760B-14.
  • 3John T Caulfield.Next generation IR focal plane arrays and application[C]//Proceedings of the 32nd applied imagery pattern recognition workshop(AIPR),2003.
  • 4YANG Bin,LI Shutao.Pixel-level image fusion with simultaneous orthogonal matching pursuit[J].Information Fusion(S1566-2535),2012,13:10-19.
  • 5BAYLET J,BALLET P,CASTELEIN P.TV/4 Dual-Band Hg Cd Te Infrared Focal Plane Arrays with a 25-mm Pitch and Spatial Coherence[J].Journal of Electronic Materials(S0361-5235),2006,35(6):1153-1158.

同被引文献53

引证文献8

二级引证文献36

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部