增强现实应用分割中的主观视频质量评估

S. R. R. Sanches, D. M. Tokunaga, V. F. Silva, R. Tori
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引用次数: 10

摘要

在许多增强现实(AR)应用中,视频分割以提取前景中的人物一直是一个常见的任务。在背景颜色和光环境不恒定的自然环境中,分割方法必须能够在这些条件下提取出感兴趣的元素。然而,自然环境下的分割方法比传统的基于恒定颜色消去的分割方法更容易出错。因此,为了在大量应用中使用它们,有必要了解用户如何感知分割错误,以便集中精力开发避免更可感知的分割错误的算法。本文采用视频质量主观评价方法,获取AR用户对不同误分类像素率视频的评价。结果表明,AR应用用户能够感知到分割错误。然而,视频质量与错误分类像素的数量无关。在成瘾中,我们注意到当错误集中在兴趣元素上时,相关视频的分数会下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Subjective Video Quality Assessment in Segmentation for Augmented Reality Applications
Video segmentation to extract a person in foreground has been a common task in many Augmented Reality (AR) applications. In natural environments which the background color and the light environment are not constant the segmentation method must be able to extract the element of the interest in these conditions. However, methods for segmentation in natural environment are more error prone than the traditional ones which are based on a constant color elimination. Thus, in order to use them in a large number of applications it is necessary to know how the segmentation errors are perceived by the users in order to focus on development of algorithms which avoid the more perceptible ones. In this work a video quality subjective assessment method was applied to obtain the AR user's opinions about videos with different misclassified pixels rates. The results showed that segmentation errors are perceived by AR applications users. However, the video quality was not related with the number of the misclassified pixels. In addiction, it was noted that when the errors concentrated in the element of the interest increase the score of the associated video decreases.
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