Hierarchical Feature Hashing for Fast Dimensionality Reduction

Bin Zhao, E. Xing
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引用次数: 11

Abstract

Curse of dimensionality is a practical and challenging problem in image categorization, especially in cases with a large number of classes. Multi-class classification encounters severe computational and storage problems when dealing with these large scale tasks. In this paper, we propose hierarchical feature hashing to effectively reduce dimensionality of parameter space without sacrificing classification accuracy, and at the same time exploit information in semantic taxonomy among categories. We provide detailed theoretical analysis on our proposed hashing method. Moreover, experimental results on object recognition and scene classification further demonstrate the effectiveness of hierarchical feature hashing.
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快速降维的分层特征哈希
在图像分类中,特别是在类数比较多的情况下,维数缺失是一个比较实际和具有挑战性的问题。在处理这些大规模任务时,多类分类遇到了严重的计算和存储问题。本文提出了层次特征哈希,在不牺牲分类精度的前提下,有效地降低了参数空间的维数,同时利用了类别间语义分类的信息。我们对我们提出的哈希方法进行了详细的理论分析。此外,在目标识别和场景分类方面的实验结果进一步证明了层次特征哈希的有效性。
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