Three Guidelines of Online Learning for Large-Scale Visual Recognition

Y. Ushiku, Masatoshi Hidaka, T. Harada
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引用次数: 7

Abstract

In this paper, we would like to evaluate online learning algorithms for large-scale visual recognition using state-of-the-art features which are preselected and held fixed. Today, combinations of high-dimensional features and linear classifiers are widely used for large-scale visual recognition. Numerous so-called mid-level features have been developed and mutually compared on an experimental basis. Although various learning methods for linear classification have also been proposed in the machine learning and natural language processing literature, they have rarely been evaluated for visual recognition. Therefore, we give guidelines via investigations of state-of-the-art online learning methods of linear classifiers. Many methods have been evaluated using toy data and natural language processing problems such as document classification. Consequently, we gave those methods a unified interpretation from the viewpoint of visual recognition. Results of controlled comparisons indicate three guidelines that might change the pipeline for visual recognition.
大规模视觉识别在线学习的三个准则
在本文中,我们希望评估大规模视觉识别的在线学习算法,该算法使用预先选择并保持固定的最先进特征。目前,高维特征与线性分类器的结合被广泛应用于大规模视觉识别。许多所谓的中级特征已经被开发出来,并在实验的基础上相互比较。尽管在机器学习和自然语言处理文献中也提出了各种用于线性分类的学习方法,但它们很少用于视觉识别。因此,我们通过研究最先进的线性分类器在线学习方法给出指导方针。许多方法已经被评估使用玩具数据和自然语言处理问题,如文档分类。因此,我们从视觉识别的角度对这些方法进行了统一的解释。对照比较的结果表明,可能改变视觉识别管道的三个指导方针。
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