Noise-Tolerant Hybrid Prototypical Learning with Noisy Web Data
Chao Liang, Linchao Zhu, Zongxin Yang, Wei Chen, Yi Yang

TL;DR
This paper introduces SimNoiPro, a noise-tolerant hybrid prototype learning method that effectively utilizes noisy web images for classification, improving relation modeling and prototype quality in noisy data scenarios.
Contribution
The paper proposes a novel similarity maximization loss, SimNoiPro, which generates noise-tolerant hybrid prototypes considering image diversity and end-to-end relation modeling.
Findings
Outperforms prior methods on few-shot classification benchmarks.
Effectively models relations between clean and noisy images.
Enhances prototype compactness and discriminability.
Abstract
We focus on the challenging problem of learning an unbiased classifier from a large number of potentially relevant but noisily labeled web images given only a few clean labeled images. This problem is particularly practical because it reduces the expensive annotation costs by utilizing freely accessible web images with noisy labels. Typically, prototypes are representative images or features used to classify or identify other images. However, in the few clean and many noisy scenarios, the class prototype can be severely biased due to the presence of irrelevant noisy images. The resulting prototypes are less compact and discriminative, as previous methods do not take into account the diverse range of images in the noisy web image collections. On the other hand, the relation modeling between noisy and clean images is not learned for the class prototype generation in an end-to-end manner,…
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