We study the compressive sampling (CS) and its application in video encoding framework. The video input is firstly transformed into suitable domain in order to achieve sparser configuration of coefficients. Then, we apply coefficient thresholding to classify which frames to be sampled compressively or conventionally. For frames chosen to undergo compressive sampling, the coefficient vectors will be projected into smaller vectors using random measurement matrix. As CS requires two main conditions, i.e. sparsity and matrix incoherence, this research is emphasized on the enhancement of sparsity property of the input signal. It was empirically proven that the sparsity enhancement could be reached by applying motion compensation and thresholding...
The compressive sensing theory indicates that robust reconstruction of signals can be obtained from ...
Compressive sensing [1, 2] is a novel technique that has been gaining increasing importance in the l...
This paper focuses on the problem of feature adaptive reconstruction of Compressive Sensing (CS) cap...
Compressive sampling is a novel framework that exploits sparsity of a signal in a transform domain t...
The compressive sensing (CS) theory indicates that robust reconstruction of signals can be obtained ...
Compressive sampling emerged as a very useful random protocol and has become an active research area...
The paper presents a scalable compressive sampling (CS) scheme for video acquisition. The proposed s...
An adaptive rate Compressive Sensing (CS) method for video signals is proposed. The Blocked Compress...
Compressive Sensing (CS), as a newly developed branch of sparse signal processing and representation...
Compressive sampling is a novel framework that exploits sparsity of a signal in a transform domain t...
Compressive sensing allows the reconstruction of original signals from a much smaller number of samp...
Abstract The authors consider the problem of compressive sensed video recovery via iterative thresh...
The compressive sensing theory indicates that robust reconstruction of signals can be obtained from ...
We present a compressive sensing video acquisition scheme that relies on the sparsity properties of ...
Abstract — Compressive sampling is an emerging technique that promises to effectively recover a spar...
The compressive sensing theory indicates that robust reconstruction of signals can be obtained from ...
Compressive sensing [1, 2] is a novel technique that has been gaining increasing importance in the l...
This paper focuses on the problem of feature adaptive reconstruction of Compressive Sensing (CS) cap...
Compressive sampling is a novel framework that exploits sparsity of a signal in a transform domain t...
The compressive sensing (CS) theory indicates that robust reconstruction of signals can be obtained ...
Compressive sampling emerged as a very useful random protocol and has become an active research area...
The paper presents a scalable compressive sampling (CS) scheme for video acquisition. The proposed s...
An adaptive rate Compressive Sensing (CS) method for video signals is proposed. The Blocked Compress...
Compressive Sensing (CS), as a newly developed branch of sparse signal processing and representation...
Compressive sampling is a novel framework that exploits sparsity of a signal in a transform domain t...
Compressive sensing allows the reconstruction of original signals from a much smaller number of samp...
Abstract The authors consider the problem of compressive sensed video recovery via iterative thresh...
The compressive sensing theory indicates that robust reconstruction of signals can be obtained from ...
We present a compressive sensing video acquisition scheme that relies on the sparsity properties of ...
Abstract — Compressive sampling is an emerging technique that promises to effectively recover a spar...
The compressive sensing theory indicates that robust reconstruction of signals can be obtained from ...
Compressive sensing [1, 2] is a novel technique that has been gaining increasing importance in the l...
This paper focuses on the problem of feature adaptive reconstruction of Compressive Sensing (CS) cap...