University of Maryland, College Park.
IEEE Trans Pattern Anal Mach Intell. 2014 Jan;36(1):113-26. doi: 10.1109/TPAMI.2013.109.
Traditional biometric recognition systems rely on a single biometric signature for authentication. While the advantage of using multiple sources of information for establishing the identity has been widely recognized, computational models for multimodal biometrics recognition have only recently received attention. We propose a multimodal sparse representation method, which represents the test data by a sparse linear combination of training data, while constraining the observations from different modalities of the test subject to share their sparse representations. Thus, we simultaneously take into account correlations as well as coupling information among biometric modalities. A multimodal quality measure is also proposed to weigh each modality as it gets fused. Furthermore, we also kernelize the algorithm to handle nonlinearity in data. The optimization problem is solved using an efficient alternative direction method. Various experiments show that the proposed method compares favorably with competing fusion-based methods.
传统的生物识别系统依赖于单一的生物识别签名进行认证。虽然利用多种信息源来建立身份已经得到广泛认可,但多模态生物识别的计算模型最近才受到关注。我们提出了一种多模态稀疏表示方法,通过稀疏线性组合训练数据来表示测试数据,同时约束测试对象的不同模态的观测值共享其稀疏表示。因此,我们同时考虑了生物识别模态之间的相关性和耦合信息。还提出了一种多模态质量度量标准,在融合时对每个模态进行加权。此外,我们还对算法进行核化处理以处理数据中的非线性。通过使用有效的交替方向法来解决优化问题。各种实验表明,与竞争的基于融合的方法相比,所提出的方法具有优势。