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Deep Self-Learning From Noisy Labels

About

ConvNets achieve good results when training from clean data, but learning from noisy labels significantly degrades performances and remains challenging. Unlike previous works constrained by many conditions, making them infeasible to real noisy cases, this work presents a novel deep self-learning framework to train a robust network on the real noisy datasets without extra supervision. The proposed approach has several appealing benefits. (1) Different from most existing work, it does not rely on any assumption on the distribution of the noisy labels, making it robust to real noises. (2) It does not need extra clean supervision or accessorial network to help training. (3) A self-learning framework is proposed to train the network in an iterative end-to-end manner, which is effective and efficient. Extensive experiments in challenging benchmarks such as Clothing1M and Food101-N show that our approach outperforms its counterparts in all empirical settings.

Jiangfan Han, Ping Luo, Xiaogang Wang• 2019

Related benchmarks

TaskDatasetResultRank
Image ClassificationClothing1M (test)
Accuracy76.44
546
Image ClassificationFood-101N (test)
Top-1 Accuracy85.11
48
Image ClassificationClothing1M 1.0 (test)
Accuracy81.16
45
Image ClassificationFood-101N r ≈ 20% (test)
Accuracy85.11
10
Learning with noisy labelsFood-101N noise ratio ~20% (test)
Top-1 Test Accuracy85.1
9
Image ClassificationFood101N
Accuracy85.11
7
Image ClassificationFood-101N 25k (test)
Top-1 Accuracy85.11
5
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