Abstract
We consider the problem of image recognition via two-dimensional random projection and nearest constrained subspace. First, image features are extracted by a two-dimensional random projection. The two-dimensional random projection for feature extraction is an extension of the 1D compressive sampling technique to 2D and is computationally more efficient than its 1D counterpart and 2D reconstruction is guaranteed. Second, we design a new classifier called NCSC (Nearest Constrained Subspace Classifier) and apply it to image recognition with the 2D features. The proposed classifier is a generalized version of NN (Nearest Neighbor) and NFL (Nearest Feature Line), and it has a close relationship to NS (Nearest Subspace). For large datasets, a fast NCSC, called NCSC-II, is proposed. Experiments on several publicly available image sets show that when well-tuned, NCSC/NCSC-II outperforms its rivals including NN, NFL, NS and the orthonormal ℓ2-norm classifier. NCSC/NCSC-II with the 2D random features also shows good classification performance in noisy environment.
Original language | English |
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Pages (from-to) | 1187-1198 |
Number of pages | 12 |
Journal | Journal of Visual Communication and Image Representation |
Volume | 25 |
Issue number | 5 |
DOIs | |
State | Published - Jul 2014 |
Keywords
- Affine hull
- Compressive sampling
- Constrained subspace
- Intrinsic dimension estimation
- Supervised image classification
- Two-dimensional random projection
- ℓ 0 -norm sparse presentation
- ℓ 1 -normminimization