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QUANTIFYING PERCEPTUAL QUALITY MODEL UNCERTAINTY VIA BOOTSTRAPPING

机译:通过Bootstrapping量化感知质量模型的不确定性

摘要

In various embodiments, a bootstrapping training subsystem performs sampling operation(s) on a training database that includes subjective scores to generate resampled dataset. For each resampled dataset, the bootstrapping training subsystem performs machine learning operation(s) to generate a different bootstrap perceptual quality model. The bootstrapping training subsystem then uses the bootstrap perceptual quality models to quantify the accuracy of a perceptual quality score generated by a baseline perceptual quality model for a portion of encoded video content. Advantageously, relative to prior art solutions in which the accuracy of a perceptual quality score is unknown, the bootstrap perceptual quality models enable developers and software applications to draw more valid conclusions and/or more reliably optimize encoding operations based on the perceptual quality score.
机译:在各个实施例中,自举训练子系统对包括主观分数的训练数据库执行采样操作以生成重新采样的数据集。对于每个重新采样的数据集,自举训练子系统执行机器学习操作以生成不同的引导感知质量模型。自举训练子系统然后使用引导知觉质量模型来量化由一部分编码视频内容的基线知觉质量模型生成的知觉质量分数的准确性。有利地,相对于其中感知质量得分的准确性未知的现有技术解决方案,自举感知质量模型使开发人员和软件应用能够得出更有效的结论和/或更可靠地基于感知质量得分优化编码操作。

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