属性学习的统一乘法框架

K. Liang, Hong-Yi Chang, S. Shan, Xilin Chen
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引用次数: 25

摘要

属性是对象的中级语义属性。最近的研究表明,视觉属性可以使计算机视觉领域的许多传统学习问题受益。然而,属性学习仍然是一个具有挑战性的问题,因为属性可能并不总是可以直接从输入图像中预测,并且视觉属性的变化有时在不同类别之间很大。本文提出了一个统一的属性学习乘法框架,解决了其中的关键问题。具体而言,将图像和类别信息共同投影到一个共享的特征空间中,在该空间中对潜在因素进行解纠缠和相乘以进行属性预测。生成的属性分类器是特定于类别的,而不是由所有类别共享。此外,该方法还可以利用辅助数据增强属性分类器的预测能力,在一定程度上减少了实例级属性标注的工作量。实验结果表明,该方法在实例级和类别级属性预测上都取得了较好的效果。对于基于属性的零射击学习,我们的方法显著提高了AwA数据集的最先进性能,并且在CUB数据集上取得了相当的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Unified Multiplicative Framework for Attribute Learning
Attributes are mid-level semantic properties of objects. Recent research has shown that visual attributes can benefit many traditional learning problems in computer vision community. However, attribute learning is still a challenging problem as the attributes may not always be predictable directly from input images and the variation of visual attributes is sometimes large across categories. In this paper, we propose a unified multiplicative framework for attribute learning, which tackles the key problems. Specifically, images and category information are jointly projected into a shared feature space, where the latent factors are disentangled and multiplied for attribute prediction. The resulting attribute classifier is category-specific instead of being shared by all categories. Moreover, our method can leverage auxiliary data to enhance the predictive ability of attribute classifiers, reducing the effort of instance-level attribute annotation to some extent. Experimental results show that our method achieves superior performance on both instance-level and category-level attribute prediction. For zero-shot learning based on attributes, our method significantly improves the state-of-the-art performance on AwA dataset and achieves comparable performance on CUB dataset.
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