A Randomized Approach to Sparse Subspace Clustering using Spectral clustering
Journal: International Research Journal of Advanced Engineering and Science (Vol.4, No. 3)Publication Date: 2019-15-07
Authors : Samson Hansen Sackey Samuel Nartey Kofie Abdul Karim Armah;
Page : 276-280
Keywords : Subspace clustering; Sparse subspace; Face grouping; Randomized motion segmentation; Spectral clustering.;
Abstract
The steps taken to segment an in-motion object from its training set is a major feature in a lot of computer vision applications ranging from motion segmentation to image recognition. A random subspace is expressed into sparse representation called Randomized Sparse Subspace Clustering (RSSC), which is capable of intensifying the precision of the subspace cluster on real-life datasets that we tested on significantly. RSSC adopts the assumption that highdimensional data actually lie on the low-dimensional manifold such that out-of-sample data could be grouped in the neighboring space learned from in-sample data. Experimental results show that RSSC is potential in clustering out-of-sample data.
Other Latest Articles
- The Influence of Peer Social Support on Adolescent Adjustment in Islamic Boarding School
- Determinants of Import Demand in Cote d’Ivoire: The Role of Expenditure Components
- DEVELOPMENT AND VALIDATION OF A NEW ABSORBANCE CORRECTION METHOD FOR ESTIMATION OF TELMISARTAN AND METOPROLOL SUCCINATE IN COMBINED TABLET DOSAGE FORM
- Investor Behaviour Heterogeneity in the Options Market: Chartists vs. Fundamentalists in the French Market
- Stock Market-Growth Relationship in an Emerging Economy: Empirical Finding from ARDL-Based Bounds and Causality Approaches
Last modified: 2020-06-12 19:53:18