2015
DOI: 10.7753/ijcatr0411.1012
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Fingerprint Image Compression using Sparse Representation and Enhancement with Wiener2 Filter

Abstract: Abstract:A technique for enhancing decompressed fingerprint image using Wiener2 filter is proposed. First compression is done by sparse representation. Compression of fingerprint is necessary for reducing the memory consumption and efficient transfer of fingerprint images. This is very essential for the application which includes access control and forensics. So the fingerprint image is compressed using sparse representation. In this technique, first dictionary is constructed for patches of fingerprint images.… Show more

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Cited by 1 publication
(1 citation statement)
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“…Lossless fingerprint image compression using Huffman coding, arithmetic coding for lossless compression and discrete transforms such as discrete wavelet transform, discrete cosine transform and discrete shearlet transform is made by Kadim et al (2020), A new technique for multispectral fingerprint biometric systems based on image compression and employing wavelet decomposition and Huffman coding has been introduced by Sharma et al (2020), fingerprint image compression using sparse representation and enhancement with Wiener2 Filter is a method developed by Joseph and Joseph (2015). Radhika et al (2022) made the fingerprint compression algorithm based on singular value decomposition in sparse representation; (Murthy et al, 2022) made the fingerprint compression algorithm based on sparse representation and (Saikrishna and Sreenivasulu, 2015) made the fingerprint compression algorithm based on singular value decomposition in sparse representation.…”
Section: Introductionmentioning
confidence: 99%
“…Lossless fingerprint image compression using Huffman coding, arithmetic coding for lossless compression and discrete transforms such as discrete wavelet transform, discrete cosine transform and discrete shearlet transform is made by Kadim et al (2020), A new technique for multispectral fingerprint biometric systems based on image compression and employing wavelet decomposition and Huffman coding has been introduced by Sharma et al (2020), fingerprint image compression using sparse representation and enhancement with Wiener2 Filter is a method developed by Joseph and Joseph (2015). Radhika et al (2022) made the fingerprint compression algorithm based on singular value decomposition in sparse representation; (Murthy et al, 2022) made the fingerprint compression algorithm based on sparse representation and (Saikrishna and Sreenivasulu, 2015) made the fingerprint compression algorithm based on singular value decomposition in sparse representation.…”
Section: Introductionmentioning
confidence: 99%