The content presents an end-to-end optimized blind panoramic video quality assessment (PVQA) method that consists of two modules: a scanpath generator and a quality assessor.
The scanpath generator is initially trained to predict future scanpaths by minimizing their expected code length, and then jointly optimized with the quality assessor for quality prediction. The scanpath generator is probabilistic and can work with any planar video quality assessment (VQA) model, enabling direct quality assessment of panoramic images by treating them as videos composed of identical frames.
The proposed method addresses the challenges posed by the spherical data structure of panoramic videos and the diverse and uncertain user viewing behaviors. Experiments on three public panoramic image and video quality datasets, encompassing both synthetic and authentic distortions, validate the superiority of the blind PVQA model over existing methods.
The key highlights and insights are:
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by Kanglong Fan... om arxiv.org 04-02-2024
https://arxiv.org/pdf/2404.00252.pdfDiepere vragen