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Robust re-identification using randomness and statistical learning: Quo vadis

机译:使用随机性和统计学习进行可靠的重新识别:现状

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The re-identification problem is to match objects across multiple but possibly disjoint fields of view for the purpose of sequential authentication over space and time. Detection and seeding for initialization do not presume known identity and allow for re-identification of objects and/or faces whose identity might remain unknown. Specific functionalities involved in re-identification include clustering and selection, recognition-by-parts, anomaly and change detection, sampling and tracking, fast indexing and search, sensitivity analysis, and their integration for the purpose of identity management. As re-identification processes data streams and involves change detection and on-line adaptation three complementary statistical learning frameworks, driven by randomness for the purpose of robust prediction, are advanced here to support the functionalities listed earlier and their combination thereof. The intertwined learning frameworks employed are those of (a) semi-supervised learning (SSL); (b) transduction; and (c) confor-mal prediction. The overall architecture proposed is data-driven and modular, on one side, and discriminative and progressive, on the other side. The architecture is built around autonomic computing and W5+. Autonomic computing or self-management provides for closed-loop control. W5+ answers questions related to What data to consider for sampling and collection. When to capture the data and from Where, and How to best process the data. The Who (is) query is about identity for biometrics, and the Why question for explanation purposes. The challenge addressed throughout is that of evidence-based management to progressively collect and add value to data in order to generate knowledge that leads to purposeful and gainful action including active learning for the overall purpose of re-identification. A venue for future research includes adversarial learning when re-identification is possibly "distracted" using deliberate corrupt information.
机译:重新识别问题是为了跨越空间和时间顺序进行身份验证,跨多个但可能不相交的视场匹配对象。用于初始化的检测和播种不会假定已知的身份,并且允许重新标识其身份可能仍然未知的对象和/或面部。重新识别所涉及的特定功能包括聚类和选择,部分识别,异常和变化检测,采样和跟踪,快速索引和搜索,敏感性分析以及它们的集成,以进行身份​​管理。随着重新识别处理数据流并涉及变化检测和在线适应,出于先进的预测目的,由随机性驱动的三个互补的统计学习框架在这里得到了发展,以支持前面列出的功能及其组合。相互交织的学习框架是:(a)半监督学习(SSL); (b)转导; (c)适形预测。提出的总体体系结构一方面是数据驱动和模块化的,另一方面是歧视性和渐进性的。该体系结构围绕自主计算和W5 +构建。自主计算或自我管理提供了闭环控制。 W5 +回答与要考虑进行采样和收集的数据有关的问题。何时捕获数据以及从何处捕获数据,以及如何最佳地处理数据。 Who(is)查询是关于生物识别的身份,以及出于解释目的的Why问题。整个过程所面临的挑战是基于证据的管理,以逐步收集数据并为数据增加价值,以产生导致有目的和有收益的行动的知识,包括为重新识别的总体目的而积极学习。当使用故意的腐败信息“重新识别”可能“分散注意力”时,未来的研究场所将包括对抗性学习。

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