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Effective multi-sample fusion methodology for improving biometric identification of individuals.

机译:有效的多样本融合方法,可改善个体的生物识别。

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摘要

Sequences of video frames on a person's activity are often available. The individual samples are acquired by possibly different cameras or even a single camera capturing multiple poses. Fingerprint probes can be also available in multiplicity. For example, people may be asked to provide multiple fingerprint scans from the same sensor or multiple sensors for redundancy and quality control. The data from the multiple samples and views can be fused for reliable authentication of individuals. The fusion of matching scores between the probes themselves rather than probes against enrolled templates is a novel idea which will be explored and integrated in our fusion framework. This dissertation takes a fresh view of biometric fusion where multiple samples, rather than simply the multiple modalities, is the prime focus.;A second area of examination will be the structure of the fusion functions which have hitherto been largely pre-determined (e.g., average of matching scores) rather than "learnt" from data. The fixed functions do not factor parameters associated with a particular sensor or a particular time frame (e.g., quality). They also fail to take advantage of vital auxiliary information such as the correspondence between matching results output by different sensors, or the magnitude of changes in the scans related to different time frames. Even the few fusion approaches that have attempted to account for the above factors have been limited to very specific matching algorithms and therefore do not scale. We will explore the use of trainable fusion functions that will combine the results of separate time frames by taking advantage of the relationships between the matching scores assigned to different enrolled persons, as well as, auxiliary information specific for each biometric modality. This represents a transformational shift in biometric fusion research and calls for biometric matchers to output additional information (fingerprint quality, rotation and pivot points of two matched fingerprints, and correspondence between landmark features etc.) for subsequent use by fusion algorithms. The dependence information will be derived either from the statistics of the available matching score sets and the matching model state information that is already available for specific biometric modalities. We will explore suitable matching model state information and construct theoretically optimal fusion given the statistical information about the differences in the available matching scores.
机译:通常可以获取有关某人活动的视频帧序列。单个样本可以通过可能不同的相机甚至是捕获多个姿势的单个相机获取。指纹探头也可以提供多种选择。例如,可能要求人们从同一传感器或多个传感器提供多个指纹扫描,以进行冗余和质量控制。可以融合来自多个样本和视图的数据,以便对个人进行可靠的身份验证。探针本身(而不是针对已注册模板的探针)之间匹配分数的融合是一个新颖的想法,将在我们的融合框架中进行探索和整合。本论文从生物特征融合的角度出发,以多个样本而非简单的多种形式为主要焦点。第二个研究领域将是融合功能的结构,这些功能迄今已被预先确定(例如,匹配分数的平均值),而不是从数据中“学习”。固定功能不考虑与特定传感器或特定时间范围(例如质量)相关的参数。它们还无法利用重要的辅助信息,例如不同传感器输出的匹配结果之间的对应关系,或与不同时间范围相关的扫描变化的幅度。甚至尝试解决上述因素的几种融合方法也仅限于非常具体的匹配算法,因此无法扩展。我们将探索可训练的融合功能的使用,该功能将利用分配给不同入组人员的匹配得分之间的关​​系,以及针对每种生物特征识别方式的辅助信息,来组合不同时间范围的结果。这代表了生物识别融合研究的一次转变,呼吁生物识别匹配器输出更多信息(指纹质量,两个匹配指纹的旋转和枢轴点以及地标特征之间的对应关系等),以供融合算法随后使用。依赖关系信息将从可用的匹配得分集的统计信息和已经可用于特定生物特征模式的匹配模型状态信息中得出。我们将探索合适的匹配模型状态信息,并根据有关可用匹配得分差异的统计信息,构建理论上最佳的融合。

著录项

  • 作者

    Cheng, Xi.;

  • 作者单位

    State University of New York at Buffalo.;

  • 授予单位 State University of New York at Buffalo.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 135 p.
  • 总页数 135
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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