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Opening Deep Neural Networks with Generative Models

2021-05-20 20:02:29
Marcos Vendramini, Hugo Oliveira, Alexei Machado, Jefersson A. dos Santos

Abstract

Image classification methods are usually trained to perform predictions taking into account a predefined group of known classes. Real-world problems, however, may not allow for a full knowledge of the input and label spaces, making failures in recognition a hazard to deep visual learning. Open set recognition methods are characterized by the ability to correctly identifying inputs of known and unknown classes. In this context, we propose GeMOS: simple and plug-and-play open set recognition modules that can be attached to pretrained Deep Neural Networks for visual recognition. The GeMOS framework pairs pre-trained Convolutional Neural Networks with generative models for open set recognition to extract open set scores for each sample, allowing for failure recognition in object recognition tasks. We conduct a thorough evaluation of the proposed method in comparison with state-of-the-art open set algorithms, finding that GeMOS either outperforms or is statistically indistinguishable from more complex and costly models.

Abstract (translated)

URL

https://arxiv.org/abs/2105.10013

PDF

https://arxiv.org/pdf/2105.10013.pdf


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