学习多个对象类的分层组合表示

A. Leonardis
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引用次数: 0

摘要

只提供摘要形式。几十年来,视觉分类、识别和检测一直是视觉界的一个活跃研究领域。最终的目标是在可接受的时间范围内识别和检测图像中的大量对象类。这个问题涉及三个高度相互关联的问题:内部对象表示,它应该随着类的数量次线性扩展,意味着从一组图像中学习表示,以及一个有效的推理算法,将对象表示与从场景中产生的表示相匹配。在演讲的主要部分,我将介绍我们的框架,用于学习多个对象类的分层组合表示。学习是无监督的、统计的、自下而上的。该方法采用简单的轮廓碎片,并学习它们频繁的空间配置,这些空间配置递归地组合成越来越复杂和特定类别的轮廓组合。
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Learning a hierarchical compositional representation of multiple object classes
Summary form only given. Visual categorization, recognition, and detection of objects has been an area of active research in the vision community for decades. Ultimately, the goal is to recognize and detect a large number of object classes in images within an acceptable time frame. This problem entangles three highly interconnected issues: the internal object representation which should expand sublinearly with the number of classes, means to learn the representation from a set of images, and an effective inference algorithm that matches the object representation against the representation produced from the scene. In the main part of the talk I will present our framework for learning a hierarchical compositional representation of multiple object classes. Learning is unsupervised, statistical, and is performed bottom-up. The approach takes simple contour fragments and learns their frequent spatial configurations which recursively combine into increasingly more complex and class-specific contour compositions.
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