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Papers/Bootstrapping the Relationship Between Images and Their Cl...

Bootstrapping the Relationship Between Images and Their Clean and Noisy Labels

Brandon Smart, Gustavo Carneiro

2022-10-17Image ClassificationLearning with noisy labels
PaperPDFCode(official)

Abstract

Many state-of-the-art noisy-label learning methods rely on learning mechanisms that estimate the samples' clean labels during training and discard their original noisy labels. However, this approach prevents the learning of the relationship between images, noisy labels and clean labels, which has been shown to be useful when dealing with instance-dependent label noise problems. Furthermore, methods that do aim to learn this relationship require cleanly annotated subsets of data, as well as distillation or multi-faceted models for training. In this paper, we propose a new training algorithm that relies on a simple model to learn the relationship between clean and noisy labels without the need for a cleanly labelled subset of data. Our algorithm follows a 3-stage process, namely: 1) self-supervised pre-training followed by an early-stopping training of the classifier to confidently predict clean labels for a subset of the training set; 2) use the clean set from stage (1) to bootstrap the relationship between images, noisy labels and clean labels, which we exploit for effective relabelling of the remaining training set using semi-supervised learning; and 3) supervised training of the classifier with all relabelled samples from stage (2). By learning this relationship, we achieve state-of-the-art performance in asymmetric and instance-dependent label noise problems.

Results

TaskDatasetMetricValueModel
Image Classificationmini WebVision 1.0ImageNet Top-1 Accuracy75.96BtR
Image Classificationmini WebVision 1.0ImageNet Top-5 Accuracy92.2BtR
Image Classificationmini WebVision 1.0Top-1 Accuracy80.88BtR
Image Classificationmini WebVision 1.0Top-5 Accuracy92.76BtR
Image ClassificationANIMALAccuracy88.5BtR
Document Text ClassificationANIMALAccuracy88.5BtR

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