Indian Journal of Science and Technology
DOI: 10.17485/ijst/2015/v8i8/69371
Year: 2015, Volume: 8, Issue: 8, Pages: 766–770
Original Article
S. Nirmalraj 1 and T. Vigneswaran2*
1 Department of E.E.E, Sathyabama University, India
2 Department of E.C.E, VIT University, Chennai, India; snirmal4u@yahoo.co.in
Background: All natural signals are subjected to sparsity when they are properly represented by a basis function. Sparsity helps us to sample the signals less than Nyquist rate which clearly explained by the recent theory known as compressive sensing.
Methods: This paper explains that DFT does a good job in converting the given image into sparse when the energy density of the image is varied and also a cascaded transform DFT and DWT is proposed. Qualitative measures for the cascaded transform were observed to be good.
Result: It helps us to convert a given image signal into sparse without loss in information content present in that image.
Application: While converting an analog signal into digital, sparsity will help to compress a given analog signal before conversion. So the number of samples obtained by sampling the compressed signal becomes less.
Keywords: Compressive Sensing, Energy Density, Image Transforms Information Preservation Capability, Sparsity
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