General Framework of Compressive Sampling and its Applications for Signal and Image Compression A Random Approach

Prabhat Thakur
2015 Journal of Technology Management for Growing Economies  
Compressive sampling emerged as a very useful random protocol and has become an active research area for almost a decade. Compressive sampling allows us to sample a signal below Shannon Nyquist rate and assures its successful reconstruction if the signal is sparse. In this paper we used compressive sampling for arbitrary signal and image compression and successfully reconstructed them by solving l1 norm optimization problem. We also showed that compressive sampling can be implemented if signal
more » ... lemented if signal is sparse and incoherent through simulations.
doi:10.15415/jtmge.2015.61001 fatcat:inmz36nvpjf5jfnev7azr462ti