User individuality based cost-sensitive learning: A case study in finger vein recognition

Lu Yang, Gongping Yang, Yilong Yin, Lizhen Zhou
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引用次数: 1

Abstract

State-of-the-art cost-sensitive learning based techniques in biometrics ignore cost difference between users and determine the loss only based on the misrecognition category. In practice, this may not always hold and the user individuality may also affect the loss of misrecognition. For example, misrecognizing an imposter as an administrator can cause a much more serious loss than misrecognizing it as a normal user. At the same time, two administrators/normal users may have different probability to accept imposter. To confidently prevent the high-probability error, the cost of false acceptance for one user with a high probability should be larger than it for the other users. To make cost definition more reasonable and further lower misrecognition cost of a recognition system, we propose to incorporate the user individuality, i.e., user role and user gullibility, into the traditional cost-sensitive learning model through defining an improved object function. By employing the new model, we further develop a user role and gullibility based mckNN (rg-mckNN). Experimental results on finger vein databases demonstrate the effectiveness of the proposed method.
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基于用户个性的代价敏感学习:指静脉识别的案例研究
最先进的基于成本敏感学习的生物识别技术忽略了用户之间的成本差异,仅根据错误识别类别确定损失。在实际操作中,这可能并不总是成立,用户的个性也可能影响误认的损失。例如,将冒名顶替者误认为管理员可能会导致比将其误认为普通用户严重得多的损失。同时,两个管理员/普通用户可能有不同的概率接受冒名顶替者。为了自信地防止高概率错误,一个高概率用户的错误接受成本应该大于其他用户。为了使成本定义更加合理,进一步降低识别系统的错误识别成本,我们提出通过定义改进的目标函数,将用户个性(即用户角色和用户轻信度)纳入传统的成本敏感学习模型中。通过采用新模型,我们进一步开发了基于用户角色和可受骗性的mckNN (rg-mckNN)。在手指静脉数据库上的实验结果验证了该方法的有效性。
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