目标识别中相关特征估计的自动关联确定

ilkay Ulusoy, C. Bishop
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引用次数: 5

摘要

从二维图像中识别物体是一个非常有趣的问题。最终目标是建立一个像人类一样可以识别数千种不同类别的系统。然而,为了从背景中分割前景(对象),手工标记2D训练图像是一项非常繁琐的工作。由于这个原因,近年来引入了能够从未标记的图像集中学习对象类别的智能系统。在这种情况下,图像被图像中存在的对象标记,但这些对象在图像中没有被分割。这种情况下的主要问题是,在这种无监督系统中,对象和背景是一起使用的,分割必须由系统自己执行。本文将研究一种用于无监督对象分类学习系统中前景和背景分割的自动关联确定方法。
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Automatic Relevance Determination for the Estimation of Relevant Features for Object Recognition
Object recognition from 2D images is a highly interesting problem. The final goal is to have a system which can recognize thousands of different categories like human beings do. However, hand labelling the 2D training images in order to segment the foreground (object) from the background is a very tedious job. Because of this reason, in recent years, intelligent systems which can learn object categories from unlabelled image sets have been introduced. In this case, an image is labelled by the objects which are present in the image but the objects are not segmented in the image. The main problem in this case is that the object and the background are used altogether in such unsupervised systems and segmentation must be performed by the system itself. Automatic Relevance Determination (ARD ) is a method which will be investigated in this study in order to segment foreground and background in an unsupervised object category learning system.
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