Title :
Compressive Video Sampling With Approximate Message Passing Decoding
Author :
Ma, Jianwei ; Plonka, Gerlind ; Hussaini, M. Yousuff
Author_Institution :
Dept. of Math., Florida State Univ., Tallahassee, FL, USA
Abstract :
In this paper, we apply compressed sensing (CS) to video compression. CS techniques exploit the observation that one needs much fewer random measurements than given by the Shannon-Nyquist sampling theory to recover an object if this object is compressible (i.e., sparse in the spatial domain or in a transform domain). In the CS framework, we can achieve sensing, compression, and denoising simultaneously. We propose a fast and simple online encoding by the application of pseudorandom downsampling of the 2-D fast Fourier transform to video frames. For offline decoding, we apply a modification of the recently proposed approximate message passing (AMP) algorithm. The AMP method has been derived using the statistical concept of “state evolution,” and it has been shown to considerably accelerate the convergence rate in special CS-decoding applications. We shall prove that the AMP method can be rewritten as a forward-backward splitting algorithm. This new representation enables us to give conditions that ensure convergence of the AMP method and to modify the algorithm in order to achieve higher robustness. The success of reconstruction methods for video decoding also essentially depends on the chosen transform, where sparsity of the video signals is assumed. We propose incorporating the 3-D dual-tree complex wavelet transform that possesses sufficiently good directional selectivity while being computationally less expensive and less redundant than other directional 3-D wavelet transforms.
Keywords :
compressed sensing; data compression; decoding; fast Fourier transforms; image denoising; image reconstruction; image sampling; video coding; wavelet transforms; 2D fast Fourier transform; 3D dual-tree complex wavelet transform; AMP algorithm; CS techniques; Shannon-Nyquist sampling theory; approximate message passing decoding; compressed sensing; compressive video sampling; forward-backward splitting algorithm; image denoising; image reconstruction methods; offline decoding; pseudorandom downsampling; random measurements; simple online encoding; state evolution statistical concept; video compression; video decoding; video frames; video signals; Convergence; Decoding; Image coding; Three dimensional displays; Vectors; Wavelet transforms; 3-D directional wavelets; approximate message passing (AMP) algorithm; compressed sensing (CS); forward–backward splitting algorithm; high-speed jet flow; video online compression;
Journal_Title :
Circuits and Systems for Video Technology, IEEE Transactions on
DOI :
10.1109/TCSVT.2012.2201673