CVJan 24, 2021

A Joint Representation Learning and Feature Modeling Approach for One-class Recognition

arXiv:2101.09782v1
Originality Highly original
AI Analysis

This work addresses one-class classification, a domain-specific problem, with an incremental hybrid approach.

The paper tackles one-class recognition by combining representation learning and feature modeling, achieving state-of-the-art results on three classification tasks.

One-class recognition is traditionally approached either as a representation learning problem or a feature modeling problem. In this work, we argue that both of these approaches have their own limitations; and a more effective solution can be obtained by combining the two. The proposed approach is based on the combination of a generative framework and a one-class classification method. First, we learn generative features using the one-class data with a generative framework. We augment the learned features with the corresponding reconstruction errors to obtain augmented features. Then, we qualitatively identify a suitable feature distribution that reduces the redundancy in the chosen classifier space. Finally, we force the augmented features to take the form of this distribution using an adversarial framework. We test the effectiveness of the proposed method on three one-class classification tasks and obtain state-of-the-art results.

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