Manifold bozulması ile imge kalitesi değerlendirme

Görüntü parçacık manifoldları perspektifinden, yeni bir tam referans görüntü kalitesi değerlendirmesi çerçevesi oluşturularak bir görüntü kalitesi metriği önerilmektedir. Çoğu doğal sahnenin düşük boyutlu manifoldlardan veya alt-manifoldlardan örneklendiği varsayılarak, yapısal varyasyonlarda algılanan görüntü bozulmaları yüksek derecede doğrusal olmayan görüntü manifoldlarının yüzeylerinde nicel olarak değerlendirilebilir. Manifold bozulması görüntü kalite endeksi önce uzamsal olarak yerel parçacık uzaylarının yerel doğrusal manifold yapılarının içsel geometrik özelliklerini karakterize etmekte ve daha sonra bozulma endeksini hesaplamak için orijinal pürüzsüz manifold yapısından sapmayı ölçmektedir. Deneysel sonuçlar hem öznel değerlendirme hem de gelişmiş objektif kalite değerlendirme yöntemleriyle kıyaslandığında güçlü bir taahhüt göstermektedir

Image quality assessment based on manifold distortion

An image quality metric is proposed by introducing a new framework for full reference image quality assessment from the perspective of image patch manifolds. Assuming that most natural scenes are sampled from low dimensional manifolds or submanifolds, perceived image degradations in structural variations can be quantitatively evaluated on the surfaces of highly nonlinear image manifolds. Manifold distortion image quality index first characterizes intrinsic geometric properties of the locally linear manifold structures of spatially local patch spaces, and then measures the deviation from the original smooth manifold structure to calculate the distortion index. Experimental results demonstrate a strong promise with a comparison to both subjective evaluation and state-of-the-art objective quality assessment methods

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