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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Latent multi-feature co-regression for visual recognition by discriminatively leveraging multi-source models
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Latent multi-feature co-regression for visual recognition by discriminatively leveraging multi-source models

机译:通过差异利用多源模型来视觉识别的潜在多特征共回

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摘要

Learning a visual category with few labeled samples is a challenging problem in machine learning, which has motivated the multi-source adaptation learning technique, which exploits to transfer multiple prior discriminative models to target domain. Under this paradigm, however, different visual features at hand cannot be effectively exploited to represent a target object with versatility for boosting the adaptation performance. Besides, existing multi-source adaptation schemes mostly focus on either visual understanding or feature learning, independently. This may lead to the so-called semantic gap between the low-level features and the high-level semantics. Last but not the least, how to discriminatively select the prior models is yet another unresolved issue. To address these issues, we propose a novel co-regression framework with Multi-Source adaptation Multi-Feature Representation (MSMFR) for visual recognition, which jointly explores robust multi-feature co-regression, latent space learning, and representative sources selection, by integrating them into a unified framework for joint visual understanding and feature learning. Specifically, MSMFR conducts the multi-feature co-regression by simultaneously uncovering multiple latent spaces and minimizing the co-regression residual by taking correlations among multiple feature representations into account. Furthermore, MSMFR also automatically selects the representative (or discriminative) source models for each target feature representation via formulating a row-sparsity pursuit problem. The validity of our method is examined by three challenging visual domain adaptation tasks on several benchmark datasets, which demonstrate the superiority of our method in comparison with several state-of-the-arts. (C) 2018 Elsevier Ltd. All rights reserved.
机译:使用少数标记样本学习视觉类别是机器学习中的一个具有挑战性的问题,它具有多源适应学习技术,该技术利用将多个先前辨别模型传输到目标域。然而,在该范例下,不能有效地利用手掌的不同视觉特征来表示具有多功能性的目标对象,以提高适应性能。此外,现有的多源适应方案主要关注视觉理解或独立学习。这可能导致低级功能与高级语义之间所谓的语义差距。最后但并非最不重要的是,如何辨别地选择先前的模型是另一个未解决的问题。要解决这些问题,我们提出了一种具有多源适应多特征表示(MSMFR)的新型共回收框架,用于视觉识别,该识别共同探讨了鲁棒的多特征共回归,潜在空间学习和代表源选择,由将它们集成到统一的框架中,以共同视觉理解和特色学习。具体地,MSMFR通过同时揭示多个潜在空间并通过考虑多个特征表示之间的相关性来实现多个潜空间并最小化共回归残差。此外,MSMFR还通过制定行稀疏追踪问题自动为每个目标特征表示自动选择代表性(或判别)源模型。在多个基准数据集中,通过三个具有挑战性的视野适应任务进行了对方法的有效性,这证明了与多种最先进的方法的方法的优势。 (c)2018年elestvier有限公司保留所有权利。

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