NMF and FLD based feature extraction with application to Synthetic Aperture Radar target recognition
Citations Over TimeTop 22% of 2012 papers
Abstract
Feature extraction is a very important step in Synthetic Aperture Radar automatic target recognition (SAR ATR). In this paper, a feature extraction procedure based on the nonnegative matrix factorization (NMF) and Fisher linear discriminant (FLD) analysis is proposed for target recognition in SAR images. Firstly, segmented SAR images are processed by the NMF algorithm, which can extract nonnegative features that contain the local spatial structure information of targets. Then the FLD method is applied to the extracted features, thus the discriminability of the features can be enhanced. Both the spatial locality and separability between classes are enforced by this two-phase feature extracting procedure. Finally, the obtained features are used for automatic target recognition. Compared to several other methods, experimental results show the effectiveness of the proposed method for target feature extraction and recognition in SAR images.
Related Papers
- → Non-Negative Matrix Factorization with Constraints(2010)60 cited
- → Non-Negative Matrix Factorization for Note Onset Detection of Audio Signals(2006)12 cited
- → Sparsity promoted non-negative matrix factorization for source separation and detection(2014)3 cited
- → Detection of Brain Activity in Functional Magnetic Resonance Imaging Data using Matrix Factorization(2013)1 cited
- → PHASL-NMF: Hierarchical ALS Based Power Non-Negative Matrix Factorization(2023)