Probabilistic Label Trees for Efficient Large Scale Image Classification

Baoyuan Liu, Fereshteh Sadeghi, M. Tappen, O. Shamir, Ce Liu
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引用次数: 82

Abstract

Large-scale recognition problems with thousands of classes pose a particular challenge because applying the classifier requires more computation as the number of classes grows. The label tree model integrates classification with the traversal of the tree so that complexity grows logarithmically. In this paper, we show how the parameters of the label tree can be found using maximum likelihood estimation. This new probabilistic learning technique produces a label tree with significantly improved recognition accuracy.
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基于概率标记树的高效大规模图像分类
具有数千个类的大规模识别问题提出了一个特别的挑战,因为随着类数量的增加,应用分类器需要更多的计算。标签树模型将分类与树的遍历集成在一起,从而使复杂性呈对数增长。在本文中,我们展示了如何使用最大似然估计来找到标签树的参数。这种新的概率学习技术产生了一个显著提高识别精度的标签树。
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