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Nor-Vdpnet: A No-Reference High Dynamic Range Quality Metric Trained On Hdr-Vdp 2

机译:Nor-Vdpnet:在Hdr-Vdp 2上训练的无参考高动态范围质量指标

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HDR-VDP 2 has convincingly shown to be a reliable metric for image quality assessment, and it is currently playing a remarkable role in the evaluation of complex image processing algorithms. However, HDR-VDP 2 is known to be computationally expensive (both in terms of time and memory) and is constrained to the availability of a ground-truth image (the so-called reference) against to which the quality of a processed imaged is quantified. These aspects impose severe limitations on the applicability of HDR-VDP 2 to realworld scenarios involving large quantities of data or requiring real-time responses. To address these issues, we propose Deep No-Reference Quality Metric (NoR-VDPNet), a deeplearning approach that learns to predict the global image quality feature (i.e., the mean-opinion-score index Q) that HDRVDP 2 computes. NoR-VDPNet is no-reference (i.e., it operates without a ground truth reference) and its computational cost is substantially lower when compared to HDR-VDP 2 (by more than an order of magnitude). We demonstrate the performance of NoR-VDPNet in a variety of scenarios, including the optimization of parameters of a denoiser and JPEG-XT.
机译:HDR-VDP 2令人信服地显示出它是用于图像质量评估的可靠指标,并且目前在评估复杂图像处理算法方面起着举足轻重的作用。然而,已知HDR-VDP 2在计算上是昂贵的(在时间和存储器方面),并且受制于地面真实图像(所谓的参考)的可用性,相对于地面真实图像(所谓的参考),处理后的成像质量取决于该真实图像。量化的。这些方面严重限制了HDR-VDP 2在涉及大量数据或需要实时响应的现实世界中的适用性。为了解决这些问题,我们提出了深度无参考质量指标(NoR-VDPNet),这是一种深度学习方法,可学习预测HDRVDP 2计算的全局图像质量特征(即平均意见得分指数Q)。 NoR-VDPNet是无参考的(即,它在没有地面真实参考的情况下运行),与HDR-VDP 2相比,其计算成本大大降低(超过一个数量级)。我们演示了NoR-VDPNet在各种情况下的性能,包括去噪器和JPEG-XT参数的优化。

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