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Constructing Category Hierarchies for Visual Recognition

机译:构造用于视觉识别的类别层次结构

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Class hierarchies are commonly used to reduce the complexity of the classification problem. This is crucial when dealing with a large number of categories. In this work, we evaluate class hierarchies currently constructed for visual recognition. We show that top-down as well as bottom-up approaches, which are commonly used to automatically construct hierarchies, incorporate assumptions about the separability of classes. Those assumptions do not hold for visual recognition of a large number of object categories. We therefore propose a modification which is appropriate for most top-down approaches. It allows to construct class hierarchies that postpone decisions in the presence of uncertainty and thus provide higher recognition accuracy. We also compare our method to a one-against-all approach and show how to control the speed-for-accuracy trade-off with our method. For the experimental evaluation, we use the Caltech-256 visual object classes dataset and compare to state-of-the-art methods.
机译:类层次结构通常用于降低分类问题的复杂性。在处理大量类别时,这一点至关重要。在这项工作中,我们评估当前为视觉识别而构建的类层次结构。我们展示了自上而下和自下而上的方法(通常用于自动构建层次结构)结合了有关类的可分离性的假设。这些假设不适用于大量对象类别的视觉识别。因此,我们提出了适合大多数自顶向下方法的修改。它允许构造类层次结构,在存在不确定性的情况下推迟决策,从而提供更高的识别准确性。我们还将我们的方法与“万事通”方法进行了比较,并展示了如何使用我们的方法来控制速度精度的权衡。对于实验评估,我们使用Caltech-256视觉对象类数据集,并与最新方法进行比较。

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