CVFeb 17, 2019

Exploiting Unlabeled Data in CNNs by Self-supervised Learning to Rank

arXiv:1902.06285v1186 citations
Originality Highly original
AI Analysis

This work addresses the challenge of limited labeled data for regression tasks in computer vision, offering a practical solution with significant performance gains.

The paper tackles the problem of expensive labeled data collection by using self-supervised learning to rank as a proxy task for regression, achieving state-of-the-art results in Image Quality Assessment and Crowd Counting and reducing labeling effort by up to 50% through active learning.

For many applications the collection of labeled data is expensive laborious. Exploitation of unlabeled data during training is thus a long pursued objective of machine learning. Self-supervised learning addresses this by positing an auxiliary task (different, but related to the supervised task) for which data is abundantly available. In this paper, we show how ranking can be used as a proxy task for some regression problems. As another contribution, we propose an efficient backpropagation technique for Siamese networks which prevents the redundant computation introduced by the multi-branch network architecture. We apply our framework to two regression problems: Image Quality Assessment (IQA) and Crowd Counting. For both we show how to automatically generate ranked image sets from unlabeled data. Our results show that networks trained to regress to the ground truth targets for labeled data and to simultaneously learn to rank unlabeled data obtain significantly better, state-of-the-art results for both IQA and crowd counting. In addition, we show that measuring network uncertainty on the self-supervised proxy task is a good measure of informativeness of unlabeled data. This can be used to drive an algorithm for active learning and we show that this reduces labeling effort by up to 50%.

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