Kumar Ajay, Zhang David
Department of Electrical Engineering, Indian Institute of Technology Delhi, New Delhi 110016, India.
IEEE Trans Image Process. 2006 Aug;15(8):2454-61. doi: 10.1109/tip.2006.875214.
This paper proposes a new bimodal biometric system using feature-level fusion of hand shape and palm texture. The proposed combination is of significance since both the palmprint and hand-shape images are proposed to be extracted from the single hand image acquired from a digital camera. Several new hand-shape features that can be used to represent the hand shape and improve the performance are investigated. The new approach for palmprint recognition using discrete cosine transform coefficients, which can be directly obtained from the camera hardware, is demonstrated. None of the prior work on hand-shape or palmprint recognition has given any attention on the critical issue of feature selection. Our experimental results demonstrate that while majority of palmprint or hand-shape features are useful in predicting the subjects identity, only a small subset of these features are necessary in practice for building an accurate model for identification. The comparison and combination of proposed features is evaluated on the diverse classification schemes; naive Bayes (normal, estimated, multinomial), decision trees (C4.5, LMT), k-NN, SVM, and FFN. Although more work remains to be done, our results to date indicate that the combination of selected hand-shape and palmprint features constitutes a promising addition to the biometrics-based personal recognition systems.
本文提出了一种新的双峰生物识别系统,该系统使用手形和掌纹的特征级融合。所提出的这种组合具有重要意义,因为掌纹和手形图像都可以从数码相机采集的单张手部图像中提取出来。研究了几种可用于表示手形并提高性能的新手形特征。展示了使用离散余弦变换系数进行掌纹识别的新方法,该系数可直接从相机硬件获取。先前关于手形或掌纹识别的工作均未关注特征选择这一关键问题。我们的实验结果表明,虽然大多数掌纹或手形特征在预测受试者身份方面是有用的,但在实际中构建准确的识别模型仅需要这些特征中的一小部分。在所提出的特征的比较和组合在多种分类方案上进行了评估;朴素贝叶斯(正态、估计、多项式)、决策树(C4.5、LMT)、k近邻、支持向量机和前馈神经网络。尽管仍有更多工作要做,但我们目前的结果表明,所选手形和掌纹特征的组合为基于生物特征的个人识别系统增添了一个很有前景的方法。