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  • 1
    Online Resource
    Online Resource
    Elsevier BV ; 2015
    In:  Pattern Recognition Vol. 48, No. 10 ( 2015-10), p. 3249-3257
    In: Pattern Recognition, Elsevier BV, Vol. 48, No. 10 ( 2015-10), p. 3249-3257
    Type of Medium: Online Resource
    ISSN: 0031-3203
    Language: English
    Publisher: Elsevier BV
    Publication Date: 2015
    detail.hit.zdb_id: 1466343-0
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  • 2
    Online Resource
    Online Resource
    Institute of Electrical and Electronics Engineers (IEEE) ; 2018
    In:  IEEE Transactions on Neural Networks and Learning Systems Vol. 29, No. 5 ( 2018-5), p. 1975-1985
    In: IEEE Transactions on Neural Networks and Learning Systems, Institute of Electrical and Electronics Engineers (IEEE), Vol. 29, No. 5 ( 2018-5), p. 1975-1985
    Type of Medium: Online Resource
    ISSN: 2162-237X , 2162-2388
    Language: Unknown
    Publisher: Institute of Electrical and Electronics Engineers (IEEE)
    Publication Date: 2018
    detail.hit.zdb_id: 2644189-5
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  • 3
    Online Resource
    Online Resource
    Association for Computing Machinery (ACM) ; 2019
    In:  ACM Transactions on Multimedia Computing, Communications, and Applications Vol. 15, No. 3 ( 2019-08-31), p. 1-19
    In: ACM Transactions on Multimedia Computing, Communications, and Applications, Association for Computing Machinery (ACM), Vol. 15, No. 3 ( 2019-08-31), p. 1-19
    Abstract: Distance metric learning has been widely studied in multifarious research fields. The mainstream approaches learn a Mahalanobis metric or learn a linear transformation. Recent related works propose learning a linear combination of base vectors to approximate the metric. In this way, fewer variables need to be determined, which is efficient when facing high-dimensional data. Nevertheless, such works obtain base vectors using additional data from related domains or randomly generate base vectors. However, obtaining base vectors from related domains requires extra time and additional data, and random vectors introduce randomness into the learning process, which requires sufficient random vectors to ensure the stability of the algorithm. Moreover, the random vectors cannot capture the rich information of the training data, leading to a degradation in performance. Considering these drawbacks, we propose a novel distance metric learning approach by introducing base vectors explicitly learned from training data. Given a specific task, we can make a sparse approximation of its objective function using the top eigenvalues and corresponding eigenvectors of a predefined integral operator on the reproducing kernel Hilbert space. Because the process of generating eigenvectors simply refers to the training data of the considered task, our proposed method does not require additional data and can reflect the intrinsic information of the input features. Furthermore, the explicitly learned eigenvectors do not result in randomness, and we can extend our method to any kernel space without changing the objective function. We only need to learn the coefficients of these eigenvectors, and the only hyperparameter that we need to determine is the number of eigenvectors that we utilize. Additionally, an optimization algorithm is proposed to efficiently solve this problem. Extensive experiments conducted on several datasets demonstrate the effectiveness of our proposed method.
    Type of Medium: Online Resource
    ISSN: 1551-6857 , 1551-6865
    RVK:
    Language: English
    Publisher: Association for Computing Machinery (ACM)
    Publication Date: 2019
    detail.hit.zdb_id: 2182650-X
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  • 4
    Online Resource
    Online Resource
    Institute of Electrical and Electronics Engineers (IEEE) ; 2023
    In:  IEEE Transactions on Multimedia Vol. 25 ( 2023), p. 126-139
    In: IEEE Transactions on Multimedia, Institute of Electrical and Electronics Engineers (IEEE), Vol. 25 ( 2023), p. 126-139
    Type of Medium: Online Resource
    ISSN: 1520-9210 , 1941-0077
    RVK:
    Language: Unknown
    Publisher: Institute of Electrical and Electronics Engineers (IEEE)
    Publication Date: 2023
    detail.hit.zdb_id: 2033070-4
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  • 5
    Online Resource
    Online Resource
    Institute of Electrical and Electronics Engineers (IEEE) ; 2019
    In:  IEEE Transactions on Neural Networks and Learning Systems Vol. 30, No. 6 ( 2019-6), p. 1818-1830
    In: IEEE Transactions on Neural Networks and Learning Systems, Institute of Electrical and Electronics Engineers (IEEE), Vol. 30, No. 6 ( 2019-6), p. 1818-1830
    Type of Medium: Online Resource
    ISSN: 2162-237X , 2162-2388
    Language: Unknown
    Publisher: Institute of Electrical and Electronics Engineers (IEEE)
    Publication Date: 2019
    detail.hit.zdb_id: 2644189-5
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  • 6
    Online Resource
    Online Resource
    Association for the Advancement of Artificial Intelligence (AAAI) ; 2018
    In:  Proceedings of the AAAI Conference on Artificial Intelligence Vol. 32, No. 1 ( 2018-04-29)
    In: Proceedings of the AAAI Conference on Artificial Intelligence, Association for the Advancement of Artificial Intelligence (AAAI), Vol. 32, No. 1 ( 2018-04-29)
    Abstract: Domain generalization aims to apply knowledge gained from multiple labeled source domains to unseen target domains. The main difficulty comes from the dataset bias: training data and test data have different distributions, and the training set contains heterogeneous samples from different distributions. Let X denote the features, and Y be the class labels. Existing domain generalization methods address the dataset bias problem by learning a domain-invariant representation h(X) that has the same marginal distribution P(h(X)) across multiple source domains. The functional relationship encoded in P(Y|X) is usually assumed to be stable across domains such that P(Y|h(X)) is also invariant. However, it is unclear whether this assumption holds in practical problems. In this paper, we consider the general situation where both P(X) and P(Y|X) can change across all domains. We propose to learn a feature representation which has domain-invariant class conditional distributions P(h(X)|Y). With the conditional invariant representation, the invariance of the joint distribution P(h(X),Y) can be guaranteed if the class prior P(Y) does not change across training and test domains. Extensive experiments on both synthetic and real data demonstrate the effectiveness of the proposed method.
    Type of Medium: Online Resource
    ISSN: 2374-3468 , 2159-5399
    Language: Unknown
    Publisher: Association for the Advancement of Artificial Intelligence (AAAI)
    Publication Date: 2018
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  • 7
    Online Resource
    Online Resource
    Institute of Electrical and Electronics Engineers (IEEE) ; 2020
    In:  IEEE Transactions on Image Processing Vol. 29 ( 2020), p. 4804-4815
    In: IEEE Transactions on Image Processing, Institute of Electrical and Electronics Engineers (IEEE), Vol. 29 ( 2020), p. 4804-4815
    Type of Medium: Online Resource
    ISSN: 1057-7149 , 1941-0042
    Language: Unknown
    Publisher: Institute of Electrical and Electronics Engineers (IEEE)
    Publication Date: 2020
    detail.hit.zdb_id: 2034319-X
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  • 8
    Online Resource
    Online Resource
    Association for Computing Machinery (ACM) ; 2023
    In:  ACM Transactions on Multimedia Computing, Communications, and Applications Vol. 19, No. 1 ( 2023-01-31), p. 1-19
    In: ACM Transactions on Multimedia Computing, Communications, and Applications, Association for Computing Machinery (ACM), Vol. 19, No. 1 ( 2023-01-31), p. 1-19
    Abstract: Domain generalization aims at generalizing the network trained on multiple domains to unknown but related domains. Under the assumption that different domains share the same classes, previous works can build relationships across domains. However, in realistic scenarios, the change of domains is always followed by the change of categories, which raises a difficulty for collecting sufficient aligned categories across domains. Bearing this in mind, this article introduces union domain generalization (UDG) as a new domain generalization scenario, in which the label space varies across domains, and the categories in unknown domains belong to the union of all given domain categories. The absence of categories in given domains is the main obstacle to aligning different domain distributions and obtaining domain-invariant information. To address this problem, we propose category-stitch learning (CSL), which aims at jointly learning the domain-invariant information and completing missing categories in all domains through an improved variational autoencoder and generators. The domain-invariant information extraction and sample generation cross-promote each other to better generalizability. Additionally, we decouple category and domain information and propose explicitly regularizing the semantic information by the classification loss with transferred samples. Thus our method can breakthrough the category limit and generate samples of missing categories in each domain. Extensive experiments and visualizations are conducted on MNIST, VLCS, PACS, Office-Home, and DomainNet datasets to demonstrate the effectiveness of our proposed method.
    Type of Medium: Online Resource
    ISSN: 1551-6857 , 1551-6865
    RVK:
    Language: English
    Publisher: Association for Computing Machinery (ACM)
    Publication Date: 2023
    detail.hit.zdb_id: 2182650-X
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