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HSVA: Hierarchical Semantic-Visual Adaptation for Zero-Shot Learning
Advances in Neural Information Processing Systems
  • Shiming Chen, Huazhong University of Science and Technology
  • Guo Sen Xie, Alibaba Group Holding Limited
  • Yang Liu, Mohamed Bin Zayed University of Artificial Intelligence
  • Qinmu Peng, Huazhong University of Science and Technology
  • Baigui Sun, Mohamed Bin Zayed University of Artificial Intelligence
  • Hao Li, Mohamed Bin Zayed University of Artificial Intelligence
  • Xinge You, Huazhong University of Science and Technology
  • Ling Shao, Alibaba Group Holding Limited & Inception Institute of Artificial Intelligence
Document Type
Conference Proceeding
Abstract

Zero-shot learning (ZSL) tackles the unseen class recognition problem, transferring semantic knowledge from seen classes to unseen ones. Typically, to guarantee desirable knowledge transfer, a common (latent) space is adopted for associating the visual and semantic domains in ZSL. However, existing common space learning methods align the semantic and visual domains by merely mitigating distribution disagreement through one-step adaptation. This strategy is usually ineffective due to the heterogeneous nature of the feature representations in the two domains, which intrinsically contain both distribution and structure variations. To address this and advance ZSL, we propose a novel hierarchical semantic-visual adaptation (HSVA) framework. Specifically, HSVA aligns the semantic and visual domains by adopting a hierarchical two-step adaptation, i.e., structure adaptation and distribution adaptation. In the structure adaptation step, we take two task-specific encoders to encode the source data (visual domain) and the target data (semantic domain) into a structure-aligned common space. To this end, a supervised adversarial discrepancy (SAD) learning is proposed to adversarially minimize the discrepancy between the predictions of two task-specific classifiers, thus making the visual and semantic feature manifolds more closely aligned. In the distribution adaptation step, we directly minimize the Wasserstein distance between the latent multivariate Gaussian distributions to align the visual and semantic distributions using a common encoder. Finally, the structure and distribution adaptation are derived in a unified framework under two partially-aligned variational autoencoders. Extensive experiments on four benchmark datasets demonstrate that HSVA achieves superior performance on both conventional and generalized ZSL. The code is available at https://github.com/shiming-chen/HSVA.

Publication Date
12-1-2021
Keywords
  • Benchmarking,
  • Knowledge management,
  • Learning systems,
  • Signal encoding
Comments

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Citation Information
Shiming Chen, Guo Sen Xie, Yang Liu, Qinmu Peng, et al.. "HSVA: Hierarchical Semantic-Visual Adaptation for Zero-Shot Learning" Advances in Neural Information Processing Systems Vol. 20 (2021) p. 16622 - 16634 ISSN: 10495258
Available at: http://works.bepress.com/hao-li/1/