Publication | Closed Access
Conditional Gaussian Distribution Learning for Open Set Recognition
286
Citations
38
References
2020
Year
Unknown Venue
Convolutional Neural NetworkEngineeringMachine LearningAutoencodersImage ClassificationImage AnalysisData SciencePattern RecognitionVideo TransformerSupervised LearningMachine VisionFeature LearningOpen Set RecognitionComputer ScienceDeep LearningMedical Image ComputingComputer VisionDifferent Gaussian ModelsDeep Neural NetworksPattern Recognition Application
Deep neural networks have achieved state-of-the-art performance in a wide range of recognition/classification tasks. However, when applying deep learning to real-world applications, there are still multiple challenges. A typical challenge is that unknown samples may be fed into the system during the testing phase and traditional deep neural networks will wrongly recognize the unknown sample as one of the known classes. Open set recognition is a potential solution to overcome this problem, where the open set classifier should have the ability to reject unknown samples as well as maintain high classification accuracy on known classes. The variational auto-encoder (VAE) is a popular model to detect unknowns, but it cannot provide discriminative representations for known classification. In this paper, we propose a novel method, Conditional Gaussian Distribution Learning (CGDL), for open set recognition. In addition to detecting unknown samples, this method can also classify known samples by forcing different latent features to approximate different Gaussian models. Meanwhile, to avoid information hidden in the input vanishing in the middle layers, we also adopt the probabilistic ladder architecture to extract high-level abstract features. Experiments on several standard image datasets reveal that the proposed method significantly outperforms the baseline method and achieves new state-of-the-art results.
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