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EEG-based classification of video quality perception using steady state visual evoked potentials (SSVEPs)

机译:使用稳态视觉诱发电位(SSVEP)的基于EEG的视频质量感知分类

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摘要

Objective. Recent studies exploit the neural signal recorded via electroencephalography (EEG) to get a more objective measurement of perceived video quality. Most of these studies capitalize on the event-related potential component P3. We follow an alternative approach to the measurement problem investigating steady state visual evoked potentials (SSVEPs) as EEG correlates of quality changes. Unlike the P3, SSVEPs are directly linked to the sensory processing of the stimuli and do not require long experimental sessions to get a sufficient signal-to-noise ratio. Furthermore, we investigate the correlation of the EEG-based measures with the outcome of the standard behavioral assessment. Approach. As stimulus material, we used six gray-level natural images in six levels of degradation that were created by coding the images with the HM10.0 test model of the high efficiency video coding (H.265/MPEG-HEVC) using six different compression rates. The degraded images were presented in rapid alternation with the original images. In this setting, the presence of SSVEPs is a neural marker that objectively indicates the neural processing of the quality changes that are induced by the video coding. We tested two different machine learning methods to classify such potentials based on the modulation of the brain rhythm and on time-locked components, respectively. Main results. Results show high accuracies in classification of the neural signal over the threshold of the perception of the quality changes. Accuracies significantly correlate with the mean opinion scores given by the participants in the standardized degradation category rating quality assessment of the same group of images. Significance. The results show that neural assessment of video quality based on SSVEPs is a viable complement of the behavioral one and a significantly fast alternative to methods based on the P3 component.
机译:目的。最近的研究利用通过脑电图(EEG)记录的神经信号来获得对感知视频质量的更客观测量。这些研究大多数利用事件相关的潜在成分P3。我们采用另一种方法解决测量问题,因为EEG与质量变化相关,因此研究了稳态视觉诱发电位(SSVEP)。与P3不同,SSVEP直接与刺激的感觉处理相关,不需要长时间的实验即可获得足够的信噪比。此外,我们调查了基于脑电图的措施与标准行为评估结果的相关性。方法。作为刺激材料,我们使用六个等级的退化中的六个灰度自然图像,这些图像是通过高效视频编码(H.265 / MPEG-HEVC)的HM10.0测试模型使用六种不同的压缩率对图像进行编码而创建的费率。降级的图像与原始图像快速交替显示。在这种情况下,SSVEP的存在是一种神经标记,可以客观地指示对视频编码引起的质量变化的神经处理。我们测试了两种不同的机器学习方法,分别根据脑节律的调节和时间锁定的成分对此类潜力进行分类。主要结果。结果表明,在对质量变化的感知阈值之上,神经信号的分类具有很高的准确性。准确度与参与者在同一组图像的标准化降级类别等级质量评估中给出的平均意见得分显着相关。意义。结果表明,基于SSVEP的视频质量的神经评估是行为行为的可行补充,并且是基于P3组件的方法的快速替代方法。

著录项

  • 来源
    《Journal of neural engineering》 |2015年第2期|026012.1-026012.16|共16页
  • 作者单位

    Neurotechnology Group, Technische Universitaet Berlin, Berlin;

    Fraunhofer Institute for Telecommunications, Heinrich Hertz Institute, Berlin, Germany;

    Machine Learning Group, Technische Universitaet Berlin, Berlin;

    Neurophysics Group, Charite, Berlin, Germany;

    Machine Learning Group, Technische Universitaet Berlin, Berlin,Department of Brain and Cognitive Engineering, Korea University, Seoul;

    Fraunhofer Institute for Telecommunications, Heinrich Hertz Institute, Berlin, Germany,Department of Electrical Engineering, Technische Universitaet Berlin, Germany;

    Neurotechnology Group, Technische Universitaet Berlin, Berlin,Bernstein Focus Neurotechnology, Berlin;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    EEG; SSVEPs; video quality assessment; classification; MOS;

    机译:脑电图;SSVEP;视频质量评估;分类;MOS;

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