2022
DOI: 10.3390/s22072794
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Bayesian-Inference Embedded Spline-Kerneled Chirplet Transform for Spectrum-Aware Motion Magnification

Abstract: The ability to discern subtle image changes over time is useful in applications such as product quality control, civil engineering structure evaluation, medical video analysis, music entertainment, and so on. However, tiny yet useful variations are often combined with large motions, which severely distorts current video amplification methods bounded by external constraints. This paper presents a novel use of spectra to make motion magnification robust to large movements. By exploiting spectra, artificial limit… Show more

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Cited by 1 publication
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“…The Eulerian method of video amplification is quick and easy, but it only works with lower amplification factors since noise gets worse as the amplification factor rises. Cai et al (2022) saw the introduction of a brand-new method for using spectra to powerfully magnify big motions by Enjian Cai and colleagues publication. Artificial limitations are avoided by utilizing the spectra, which also amplifies little motions at identical frequency levels while disregarding larger ones in other spectral pixels.…”
Section: Literature Surveymentioning
confidence: 99%
“…The Eulerian method of video amplification is quick and easy, but it only works with lower amplification factors since noise gets worse as the amplification factor rises. Cai et al (2022) saw the introduction of a brand-new method for using spectra to powerfully magnify big motions by Enjian Cai and colleagues publication. Artificial limitations are avoided by utilizing the spectra, which also amplifies little motions at identical frequency levels while disregarding larger ones in other spectral pixels.…”
Section: Literature Surveymentioning
confidence: 99%