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A novel classification-selection approach for the self updating of template-based face recognition systems

机译:一种新的基于模板的面部识别系统自我更新的分类选择方法

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The boosting on the need of security notably increased the amount of possible facial recognition applications, especially due to the success of the Internet of Things (IoT) paradigm. However, although handcrafted and deep learning-inspired facial features reached a significant level of compactness and expressive power, the facial recognition performance still suffers from intra-class variations such as ageing, facial expressions, lighting changes, and pose. These variations cannot be captured in a single acquisition and require multiple acquisitions of long duration, which are expensive and need a high level of collaboration from the users. Among others, self-update algorithms have been proposed in order to mitigate these problems. Self-updating aims to add novel templates to the users' gallery among the inputs submitted during system operations. Consequently, computational complexity and storage space tend to be among the critical requirements of these algorithms. The present paper deals with the above problems by a novel template-based self-update algorithm, able to keep over time the expressive power of a limited set of templates stored in the system database. The rationale behind the proposed approach is in the working hypothesis that a dominating mode characterises the features' distribution given the client. Therefore, the key point is to select the best templates around that mode. We propose two methods, which are tested on systems based on handcrafted features and deep-learning-inspired autoencoders at the state-of-the-art. Three benchmark data sets are used. Experimental results confirm that, by effective and compact feature sets which can support our working hypothesis, the proposed classification-selection approaches overcome the problem of manual updating and, in case, stringent computational requirements. (C) 2019 Elsevier Ltd. All rights reserved.
机译:提高安全性的需要显着增加了可能的面部识别应用的量,特别是由于事物互联网(物联网)范式的成功。然而,尽管手工制作和深度学习的面部特征达到了显着的紧凑性和表现力,但面部识别性能仍然存在类内变化,例如老化,面部表情,照明变化和姿势。这些变型不能在单个采集中捕获,并且需要多次获取长时间的采集,这是昂贵的并且需要用户高度的协作。其中,已经提出了自我更新算法以减轻这些问题。自我更新旨在为在系统操作期间提交的输入中的用户库中添加新颖的模板。因此,计算复杂性和存储空间往往是这些算法的关键要求之一。本文通过新颖的基于模板的自我更新算法涉及上述问题,能够保持超越存储在系统数据库中的有限模板集的表现力。所提出的方法背后的理由在于工作假设,即主导模式表征了客户的特征分布。因此,关键点是选择此模式周围的最佳模板。我们提出了两种方法,这些方法在基于手工业功能和最先进的深度学习启发的AutoEncoders上进行测试。使用三个基准数据集。实验结果证实,通过可以支持我们工作假设的有效和紧凑的功能集,所提出的分类选择方法克服了手动更新的问题,而在严格的计算要求。 (c)2019年elestvier有限公司保留所有权利。

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