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Unsupervised Abnormality Detection through Mixed Structure Regularization in Deep Sparse Autoencoders

2019-02-28 12:01:48
Moti Freiman, Ravindra Manjeshwar, Liran Goshen

Abstract

Deep sparse auto-encoders with mixed structure regularization (MSR) in addition to explicit sparsity regularization term and stochastic corruption of the input data with Gaussian noise have the potential to improve unsupervised abnormality detection. Unsupervised abnormality detection based on identifying outliers using deep sparse auto-encoders is a very appealing approach for medical computer aided detection systems as it requires only healthy data for training rather than expert annotated abnormality. In the task of detecting coronary artery disease from Coronary Computed Tomography Angiography (CCTA), our results suggests that the MSR has the potential to improve overall performance by 20-30% compared to deep sparse and denoising auto-encoders.

Abstract (translated)

URL

https://arxiv.org/abs/1902.11036

PDF

https://arxiv.org/pdf/1902.11036.pdf


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