4.8 Article

Discriminative Unsupervised Feature Learning with Exemplar Convolutional Neural Networks

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2015.2496141

关键词

Convolutional networks; unsupervised learning; feature learning; image classification; descriptor matching

资金

  1. ERC Starting Grant VideoLearn [279401]
  2. BrainLinks-BrainTools Cluster of Excellence - German Research Foundation [EXC 1086]
  3. Deutsche Telekom Stifung
  4. European Research Council (ERC) [279401] Funding Source: European Research Council (ERC)

向作者/读者索取更多资源

Deep convolutional networks have proven to be very successful in learning task specific features that allow for unprecedented performance on various computer vision tasks. Training of such networks follows mostly the supervised learning paradigm, where sufficiently many input-output pairs are required for training. Acquisition of large training sets is one of the key challenges, when approaching a new task. In this paper, we aim for generic feature learning and present an approach for training a convolutional network using only unlabeled data. To this end, we train the network to discriminate between a set of surrogate classes. Each surrogate class is formed by applying a variety of transformations to a randomly sampled 'seed' image patch. In contrast to supervised network training, the resulting feature representation is not class specific. It rather provides robustness to the transformations that have been applied during training. This generic feature representation allows for classification results that outperform the state of the art for unsupervised learning on several popular datasets (STL-10, CIFAR-10, Caltech-101, Caltech-256). While features learned with our approach cannot compete with class specific features from supervised training on a classification task, we show that they are advantageous on geometric matching problems, where they also outperform the SIFT descriptor.

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