Spatial Data Compression and Denoising via Wavelet Transformation
نویسندگان
چکیده
Biswajeet Pradhan, Institute for Advanced Technologies (ITMA), Faculty of Engineering, University Putra, Malaysia Correspondence to Biswajeet Pradhan: [email protected] Sandeep Kumar, Department of Mechanical Engineering, Institute of Technology, Banaras Hindu University (BHU), India Shattri Mansor, Institute for Advanced Technologies (ITMA), Faculty of Engineering, University Putra, Malaysia Abdul Rahman Ramli, Institute for Advanced Technologies (ITMA), Faculty of Engineering, University Putra, Malaysia Abdul Rashid B. Mohamed Sharif, Institute for Advanced Technologies (ITMA), Faculty of Engineering, University Putra, Malaysia
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