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Adjustment Learning and Relevant Component Analysis

机译:调整学习和相关成分分析

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We propose a new learning approach for image retrieval, which we call adjustment learning, and demonstrate its use for face recognition and color matching. Our approach is motivated by a frequently encountered problem, namely, that variability in the original data representation which is not relevant to the task may interfere with retrieval and make it very difficult. Our key observation is that in real applications of image retrieval, data sometimes comes in small chunks-small subsets of images that come from the same (but unknown) class. This is the case, for example, when a query is presented via a short video clip. We call these groups chunklets, and we call the paradigm which uses chunklets for unsupervised learning adjustment learning. Within this paradigm we propose a linear scheme, which we call Relevant Component Analysis; this scheme uses the information in such chunklets to reduce irrelevant variability in the data while amplifying relevant variability. We provide results using our method on two problems: face recognition (using a database publicly available on the web), and visual surveillance (using our own data). In the latter application chunklets are obtained automatically from the data without the need of supervision.
机译:我们提出了一种新的学习方法,用于图像检索,我们呼叫调整学习,并展示其用于面部识别和颜色匹配的用途。我们的方法是由经常遇到的问题激励,即,与任务无关的原始数据表示中的可变性可能会干扰检索并使其非常困​​难。我们的重点观察是,在图像检索的真实应用中,数据有时来自来自同一(但未知)类的小块 - 小套件。例如,当通过短视频剪辑呈现查询时,就是这种情况。我们称之为这些组Chunklet,我们称之为使用Chunklet用于无监督学习调整学习的范例。在此范式中,我们提出了一种线性方案,我们称之为相关的组件分析;该方案使用这种Chunklet中的信息来降低数据中的无关可变性,同时放大相关变异性。我们在两个问题上使用我们的方法提供结果:面部识别(使用网络上公开提供的数据库),以及视觉监控(使用我们自己的数据)。在后一种应用程序中,在没有监督的情况下自动从数据中获取。

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