Deep Closed-Form Subspace Clustering
Citations Over TimeTop 24% of 2019 papers
Abstract
We propose Deep Closed-Form Subspace Clustering (DCFSC), a new embarrassingly simple model for subspace clustering with learning non-linear mapping. Compared with the previous deep subspace clustering (DSC) techniques, our DCFSC does not have any parameters at all for the self-expressive layer. Instead, DCFSC utilizes the implicit data-driven self-expressive layer derived from closed-form shallow auto-encoder. Moreover, DCFSC also has no complicated optimization scheme, unlike the other subspace clustering methods. With its extreme simplicity, DCFSC has significant memory-related benefits over the existing DSC method, especially on the large dataset. Several experiments showed that our DCFSC model had enough potential to be a new reference model for subspace clustering on large-scale high-dimensional dataset.
Related Papers
- → Unsupervised local deep feature for image recognition(2016)49 cited
- → Emotional textile image classification based on cross-domain convolutional sparse autoencoders with feature selection(2017)5 cited
- → Face Recognition Based on Deep Aggregated Sparse Autoencoder Network(2018)2 cited
- → Discriminative Autoencoder for Feature Extraction: Application to Character Recognition(2019)
- → Discriminative Autoencoder for Feature Extraction: Application to\n Character Recognition(2019)