Quality assessment of higher resolution images and videos with remote testing.

Steve Göring, Rakesh Rao Ramachandra Rao, Alexander Raake
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引用次数: 4

Abstract

In many research fields, human-annotated data plays an important role as it is used to accomplish a multitude of tasks. One such example is in the field of multimedia quality assessment where subjective annotations can be used to train or evaluate quality prediction models. Lab-based tests could be one approach to get such quality annotations. They are usually performed in well-defined and controlled environments to ensure high reliability. However, this high reliability comes at a cost of higher time consumption and costs incurred. To mitigate this, crowd or online tests could be used. Usually, online tests cover a wider range of end devices, environmental conditions, or participants, which may have an impact on the ratings. To verify whether such online tests can be used for visual quality assessment, we designed three online tests. These online tests are based on previously conducted lab tests as this enables comparison of the results of both test paradigms. Our focus is on the quality assessment of high-resolution images and videos. The online tests use AVrate Voyager, which is a publicly accessible framework for online tests. To transform the lab tests into online tests, dedicated adaptations in the test methodologies are required. The considered modifications are, for example, a patch-based or centre cropping of the images and videos, or a randomly sub-sampling of the to-be-rated stimuli. Based on the analysis of the test results in terms of correlation and SOS analysis it is shown that online tests can be used as a reliable replacement for lab tests albeit with some limitations. These limitations relate to, e.g., lack of appropriate display devices, limitation of web technologies, and modern browsers considering support for different video codecs and formats.

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使用远程测试对高分辨率图像和视频进行质量评估。
在许多研究领域,人工注释数据扮演着重要的角色,因为它被用来完成大量的任务。一个这样的例子是在多媒体质量评估领域,主观注释可以用来训练或评估质量预测模型。基于实验室的测试可能是获得这种高质量注释的一种方法。它们通常在定义良好且受控制的环境中执行,以确保高可靠性。然而,这种高可靠性是以更高的时间消耗和成本为代价的。为了缓解这种情况,可以使用群体测试或在线测试。通常,在线测试涵盖更广泛的终端设备、环境条件或参与者,这可能会对评级产生影响。为了验证这种在线测试是否可以用于视觉质量评估,我们设计了三个在线测试。这些在线测试基于先前进行的实验室测试,这样可以比较两种测试范例的结果。我们的重点是高分辨率图像和视频的质量评估。在线测试使用AVrate Voyager,这是一个可公开访问的在线测试框架。要将实验室测试转换为在线测试,需要对测试方法进行专门的调整。考虑的修改是,例如,对图像和视频进行基于补丁或中心裁剪,或对待评级的刺激进行随机子抽样。基于相关分析和SOS分析对测试结果的分析表明,在线测试可以作为实验室测试的可靠替代,尽管存在一定的局限性。这些限制涉及到,例如,缺乏合适的显示设备,网络技术的限制,以及考虑支持不同视频编解码器和格式的现代浏览器。
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