Gabor Filtering and Adaptive Optimization Neural Network for Iris Double Recognition

The iris image is greatly affected by the collection environment, so, the outputs of different iris categories in the distance recognition algorithm may similar. Neural network recognition algorithm can improve the results distinction, but the same neural network structure has a great difference in the recognition effect of different iris libraries. They all may reduce the accuracy of iris recognition. This paper proposes an iris double recognition algorithm based on Gabor filtering and adaptive optimization neural network. Gabor filtering is used to extract iris features. Hamming distance is used to eliminate most of different categories in the first recognition. The BP neural network that connection weights are optimized by immune particle swarm optimization algorithm is used for the second recognition. The results that the proposed algorithm compares with many algorithms in different iris libraries show that the proposed algorithm can effectively improve iris recognition accuracy.

[1]  Chun-Wei Tan,et al.  Accurate Iris Recognition at a Distance Using Stabilized Iris Encoding and Zernike Moments Phase Features , 2014, IEEE Transactions on Image Processing.

[2]  Fei He,et al.  Face–iris multimodal biometric scheme based on feature level fusion , 2015, J. Electronic Imaging.

[3]  Xinmin Wang,et al.  System Identification Method for Small Unmanned Helicopter Based on Improved Particle Swarm Optimization , 2016 .

[4]  Yongqiang Ye,et al.  An improved immune algorithm for optimizing the pulse width modulation control sequence of inverters , 2017 .

[5]  Ying Chen,et al.  Score level fusion scheme based on adaptive local Gabor features for face-iris-fingerprint multimodal biometric , 2014, J. Electronic Imaging.

[6]  Xu Liang,et al.  Flexible job shop scheduling based on improved hybrid immune algorithm , 2018, J. Ambient Intell. Humaniz. Comput..

[7]  Anjan Biswas,et al.  Application of Tanh Method to Complex Coupled Nonlinear Evolution Equations , 2016 .

[8]  Shuai Liu,et al.  Iris double recognition based on modified evolutionary neural network , 2017, J. Electronic Imaging.

[9]  Ajay Kumar,et al.  Toward More Accurate Iris Recognition Using Cross-Spectral Matching , 2017, IEEE Transactions on Image Processing.

[10]  Yuanning Liu,et al.  Secondary iris recognition method based on local energy-orientation feature , 2015, J. Electronic Imaging.

[11]  Shuai Liu,et al.  Iris Recognition Based on Adaptive Gabor Filter , 2017, CCBR.

[12]  Zhao Wenjie,et al.  Improved Bare Bones Particle Swarm Optimization with Adaptive Search Center , 2016 .

[13]  Fei He,et al.  Deep learning architecture for iris recognition based on optimal Gabor filters and deep belief network , 2017, J. Electronic Imaging.