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Relative Forest for Visual Attribute Prediction

机译:视觉属性预测的相对森林

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摘要

Accurate prediction of the visual attributes is significant in various recognition tasks. For many visual attributes, while it is very difficult to describe the exact degrees of their presences, by comparing the pairs of samples, the relative ordering of presences may be easily figured out. Based on this observation, instead of considering such attribute as binary attribute, the relative attribute method learns a ranking function for each attribute to provide more accurate and informative prediction results. In this paper, we also explore pairwise ranking for visual attribute prediction and propose to improve the relative attribute method in two aspects. First, we propose a relative tree method, which can achieve more accurate ranking in case of nonlinearly distributed visual data. Second, by resorting to randomization and ensemble learning, the relative tree method is extended to the relative forest method to further boost the accuracy and simultaneously reduce the computational cost. To validate the effectiveness of the proposed methods, we conduct extensive experiments on four databases: PubFig, OSR, FGNET, and WebFace. The results show that the proposed relative forest method not only outperforms the original relative attribute method, but also achieve the state-of-the-art accuracy for ordinal visual attribute prediction.
机译:在各种识别任务中,视觉属性的准确预测非常重要。对于许多视觉属性,尽管很难描述它们存在的确切程度,但是通过比较样本对,可以轻松找出存在的相对顺序。基于此观察结果,相对属性方法没有考虑诸如二进制属性之类的属性,而是学习了每个属性的排名函数,以提供更准确,更有意义的预测结果。在本文中,我们还探索了成对排名以进行视觉属性预测,并提出了在两个方面改进相对属性方法的建议。首先,我们提出了一种相对树法,该方法可以在视觉数据呈非线性分布的情况下实现更准确的排名。其次,借助随机和集成学习,将相对树方法扩展到相对森林方法,以进一步提高准确性,同时降低计算成本。为了验证所提出方法的有效性,我们在四个数据库上进行了广泛的实验:PubFig,OSR,FGNET和WebFace。结果表明,提出的相对森林方法不仅优于原始的相对属性方法,而且还达到了有序视觉属性预测的最新精度。

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