Applicaiton Required

H11-M116_ADMM-SRNet 基於 ADMM 與對比特徵之單分類稀疏表示網路

Method

One-class classification aims to learn one-class models from only in-class training samples. Because of lacking out-of-class samples during training, most conventional deep learning based methods suffer from the feature collapse problem. In contrast, contrastive learning based methods can learn features from only in-class samples but are hard to be end-to-end trained with one-class models. To address the aforementioned problems, we propose alternating direction method of multipliers based sparse representation network (ADMM-SRNet). ADMM-SRNet contains the heterogeneous contrastive feature (HCF) network and the sparse dictionary (SD) network. The HCF network learns in-class heterogeneous contrastive features by using contrastive learning with heterogeneous augmentations. Then, the SD network models the distributions of the in-class training samples by using dictionaries computed based on ADMM. By coupling the HCF network, SD network and the proposed loss functions, our method can effectively learn discriminative features and one-class models of the in-class training samples in an end-to-end trainable manner. Experimental results show that the proposed method outperforms state-of-the-art methods on CIFAR-10, CIFAR-100 and ImageNet-30 datasets under one-class classification settings. Code is available at https://github.com/nchucvml/ADMM-SRNet .

Usage

COMMING SOON

Release Note

  • v1.0.0, 2023/07/11

Citation

C. -Y. Chiou, K. -T. Lee, C. -R. Huang and P. -C. Chung, "ADMM-SRNet: Alternating Direction Method of Multipliers Based Sparse Representation Network for One-Class Classification," in IEEE Transactions on Image Processing, vol. 32, pp. 2843-2856, 2023, doi: 10.1109/TIP.2023.3274488.

Acknowledgements

This work was supported in part by the National Science and Technology Council of Taiwan under Grant NSTC 111-2634-F-006-012, Grant NSTC 111-2628-E-006-011-MY3, Grant NSTC 112-2622-8-006-009-TE1, and Grant MOST 111-2327-B-006-007. We thank to National Center for High-performance Computing (NCHC) for providing computational and storage resources.

Data and Resources

This dataset has no data

Additional Info

Field Value
Source https://github.com/nchucvml/ADMM-SRNet
Author 邱建毓
Last Updated October 11, 2023, 15:01 (CST)
Created July 11, 2023, 11:44 (CST)
聯繫Email email@address.org
聯繫窗口 someone

推薦資料集:


  • 106年度臺中市地方總預算(案)附屬單位預算及綜計表-營業基金-財務摘要綜計表

    Payment instrument Free
    Update frequency Irregular
    106年度臺中市地方總預算(案)附屬單位預算及綜計表-營業基金-財務摘要綜計表
  • 綜合所得稅各項已繳及應補退稅戶數金額各級距申報統計表-縣市別:臺北市

    Payment instrument Free
    Update frequency Irregular
    綜合所得稅各項已繳及應補退稅戶數金額各級距申報統計表-縣市別:臺北市 單位:金額(千元)
  • 新北市工廠登記清冊v2-25金屬製品製造業

    Payment instrument Free
    Update frequency Irregular
    新北市工廠登記清冊-25金屬製品製造業
  • Applicaiton Required

    2016年福爾摩沙衛星二號 L1A 台東

    Payment instrument Free
    Update frequency Irregular
    此資料集為非公開資料,需由 TASA 進行資料審核。 欲申請者,請進入資料集後點選右上方「申請」填寫申請單;申請前請先登入系統。 若尚無平台帳號,請至 https://scidm.nchc.org.tw/user/register 進行註冊
  • 電子發票消費熱度指標

    Payment instrument Free
    Update frequency Irregular
    年度、縣市、縣市代碼、鄉鎮市區、鄉鎮市區代碼、村里、村里代碼、主行業別、主行業別代碼、消費熱度計算來源、張數指標、銷售額指標