A Novel Self-Supervised Re-Labeling Approach For Training With Noisy Labels

2020 IEEE WINTER CONFERENCE ON APPLICATIONS OF COMPUTER VISION (WACV)(2020)

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Abstract
The major driving force behind the immense success of deep learning models is the availability of large datasets along with their clean labels. This is very difficult to obtain and thus has motivated research on training deep neural networks in the presence of label noise. In this work, we build upon the seminal work in this area, Co-teaching and propose a simple, yet efficient approach termed mCT-S2R (modified co-teaching with self-supervision and relabeling) for this task. Firstly, to deal with significant amount of noise in the labels, we propose to use self-supervision to generate robust features without using any labels. Furthermore, using a parallel network architecture, an estimate of the clean labeled portion of the data is obtained. Finally, using this data, a portion of the estimated noisy labeled portion is re-labeled, before resuming the network training with the augmented data. Extensive experiments on three standard datasets show the effectiveness of the proposed framework.
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Key words
noisy labels,deep learning,clean labels,parallel network architecture,network training,self-supervised relabeling,mCT-S2R,modified co-teaching with self-supervision and relabeling
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