Lu Longbin, Zhang Xinman, Xu Xuebin, Shang Dongpeng
MOE Key Lab for Intelligent Networks and Network Security, School of Electronics and Information Engineering, Xi'an Jiaotong University, Xi'an, China.
Guangdong Xi'an Jiaotong University Academy, Foshan, China.
PLoS One. 2017 May 30;12(5):e0178432. doi: 10.1371/journal.pone.0178432. eCollection 2017.
Multispectral palmprint recognition has shown broad prospects for personal identification due to its high accuracy and great stability. In this paper, we develop a novel illumination-invariant multispectral palmprint recognition method. To combine the information from multiple spectral bands, an image-level fusion framework is completed based on a fast and adaptive bidimensional empirical mode decomposition (FABEMD) and a weighted Fisher criterion. The FABEMD technique decomposes the multispectral images into their bidimensional intrinsic mode functions (BIMFs), on which an illumination compensation operation is performed. The weighted Fisher criterion is to construct the fusion coefficients at the decomposition level, making the images be separated correctly in the fusion space. The image fusion framework has shown strong robustness against illumination variation. In addition, a tensor-based extreme learning machine (TELM) mechanism is presented for feature extraction and classification of two-dimensional (2D) images. In general, this method has fast learning speed and satisfying recognition accuracy. Comprehensive experiments conducted on the PolyU multispectral palmprint database illustrate that the proposed method can achieve favorable results. For the testing under ideal illumination, the recognition accuracy is as high as 99.93%, and the result is 99.50% when the lighting condition is unsatisfied.
多光谱掌纹识别因其高精度和高稳定性,在个人身份识别方面展现出广阔前景。本文提出了一种新型的光照不变多光谱掌纹识别方法。为融合多个光谱波段的信息,基于快速自适应二维经验模式分解(FABEMD)和加权Fisher准则,构建了一个图像级融合框架。FABEMD技术将多光谱图像分解为二维固有模态函数(BIMF),并对其进行光照补偿操作。加权Fisher准则用于在分解层构建融合系数,使图像在融合空间中能被正确分离。该图像融合框架对光照变化具有很强的鲁棒性。此外,还提出了一种基于张量的极限学习机(TELM)机制,用于二维(2D)图像的特征提取和分类。总体而言,该方法学习速度快,识别准确率高。在香港理工大学多光谱掌纹数据库上进行的综合实验表明,该方法能取得良好效果。在理想光照条件下测试,识别准确率高达99.93%,在光照条件不理想时,识别准确率为99.50%。