2014
DOI: 10.1049/iet-cvi.2012.0211
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Low‐resolution face recognition in uses of multiple‐size discrete cosine transforms and selective Gaussian mixture models

Abstract: Owing to losing the detailed information, the low-resolution problem in face recognition degrades the recognition performance dramatically. To overcome this problem, a novel face-recognition system has been proposed, consisting of the extracted feature vectors from the multiple-size discrete cosine transforms (mDCTs) and the recognition mechanism with selective Gaussian mixture models (sGMMs). The mDCT could extract enough visual features from low-resolution face images while the sGMM could exclude unreliable … Show more

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Cited by 5 publications
(1 citation statement)
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References 29 publications
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“…al. [11] proposed Multiple-Size Discrete Cosine Transforms (mDCTs) with the Selective Gaussian Mixture Models (sGMMs) recognition mechanism. Here illumination variant DCT features are focused.…”
Section: Fig 1: Block Diagram Of Lr-frmentioning
confidence: 99%
“…al. [11] proposed Multiple-Size Discrete Cosine Transforms (mDCTs) with the Selective Gaussian Mixture Models (sGMMs) recognition mechanism. Here illumination variant DCT features are focused.…”
Section: Fig 1: Block Diagram Of Lr-frmentioning
confidence: 99%