4.7 Article

Not All Instances Contribute Equally: Instance-Adaptive Class Representation Learning for Few-Shot Visual Recognition

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNNLS.2022.3204684

关键词

Visualization; Task analysis; Adaptation models; Training; Neural networks; Computational modeling; Extraterrestrial measurements; Few-shot; instance-adaptive; meta-learning; relative significance; visual recognition

资金

  1. National Key Research and Development Program of China [2021YFC3300200]
  2. Special Fund of Hubei Luojia Laboratory [220100014]
  3. National Natural Science Foundation of China [62002090, 62141112]

向作者/读者索取更多资源

This study proposes a novel metric-based meta-learning framework called ICRL-Net for few-shot visual recognition. It addresses the biased class representation issue by using an adaptive instance revaluing network (AIRN) to generate class representations and incorporates improved bilinear instance representation and two novel structural losses to refine the class representation. Experimental results demonstrate the superiority of ICRL-Net on commonly adopted few-shot benchmarks.
Few-shot visual recognition refers to recognize novel visual concepts from a few labeled instances. Many few-shot visual recognition methods adopt the metric-based meta-learning paradigm by comparing the query representation with class representations to predict the category of query instance. However, the current metric-based methods generally treat all instances equally and consequently often obtain biased class representation, considering not all instances are equally significant when summarizing the instance-level representations for the class-level representation. For example, some instances may contain unrepresentative information, such as too much background and information of unrelated concepts, which skew the results. To address the above issues, we propose a novel metric-based meta-learning framework termed instance-adaptive class representation learning network (ICRL-Net) for few-shot visual recognition. Specifically, we develop an adaptive instance revaluing network (AIRN) with the capability to address the biased representation issue when generating the class representation, by learning and assigning adaptive weights for different instances according to their relative significance in the support set of corresponding class. In addition, we design an improved bilinear instance representation and incorporate two novel structural losses, i.e., intraclass instance clustering loss and interclass representation distinguishing loss, to further regulate the instance revaluation process and refine the class representation. We conduct extensive experiments on four commonly adopted few-shot benchmarks: miniImageNet, tieredImageNet, CIFAR-FS, and FC100 datasets. The experimental results compared with the state-of-the-art approaches demonstrate the superiority of our ICRL-Net.

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