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首页> 外文期刊>International Journal of Computer Vision >Weakly-Supervised Cross-Domain Dictionary Learning for Visual Recognition
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Weakly-Supervised Cross-Domain Dictionary Learning for Visual Recognition

机译:弱监督跨域字典学习的视觉识别

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摘要

We address the visual categorization problem and present a method that utilizes weakly labeled data from other visual domains as the auxiliary source data for enhancing the original learning system. The proposed method aims to expand the intra-class diversity of original training data through the collaboration with the source data. In order to bring the original target domain data and the auxiliary source domain data into the same feature space, we introduce a weakly-supervised cross-domain dictionary learning method, which learns a reconstructive, discriminative and domain-adaptive dictionary pair and the corresponding classifier parameters without using any prior information. Such a method operates at a high level, and it can be applied to different cross-domain applications. To build up the auxiliary domain data, we manually collect images from Web pages, and select human actions of specific categories from a different dataset. The proposed method is evaluated for human action recognition, image classification and event recognition tasks on the UCF YouTube dataset, the Caltech101/256 datasets and the Kodak dataset, respectively, achieving outstanding results.
机译:我们解决了视觉分类问题,并提出了一种方法,该方法利用来自其他视觉域的标记较弱的数据作为辅助源数据来增强原始学习系统。所提出的方法旨在通过与源数据的协作来扩展原始训练数据的类内多样性。为了将原始目标域数据和辅助源域数据带入相同的特征空间,我们引入了一种弱监督的跨域字典学习方法,该方法学习可重构,区分性和域自适应字典对以及相应的分类器参数而不使用任何先验信息。这种方法可以在较高级别上运行,并且可以应用于不同的跨域应用程序。为了建立辅助域数据,我们从网页上手动收集图像,然后从不同的数据集中选择特定类别的人工操作。针对UCF YouTube数据集,Caltech101 / 256数据集和柯达数据集分别对人类动作识别,图像分类和事件识别任务进行了评估,从而获得了出色的结果。

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