Blind Spots of Objective Measures: Exploiting Imperceivable Errors for Immersive Tactile Internet

H. Kroep, V. Gokhale, R. V. Prasad
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Abstract

Tactile Internet (TI) enables the transfer of human skills over the Internet, enabling teleoperation with force feed-back. Advancements are being made rapidly at several fronts to realize a functional TI soon. Generally, TI is expected to faithfully reproduce operator's actions at the other end, where a robotic arm emulates it while providing force feedback to the operator. Performance of TI is usually characterized using objective metrics such as network delay, packet losses, and RMSE. Pari passu, subjective evaluations are used as additional validation, and performance evaluation itself is not primarily based on user experience. Hence objective evaluation, which generally minimizes error (signal mismatch), is oblivious to subjective experience. In this paper, we argue that user-centric designs of TI solutions are necessary. We first consider a few common TI errors and examine their perceivability, The idea is to reduce the impact of perceivable errors and exploit the imperceivable errors to our advantage, while the objective metrics may indicate that the errors are high. To harness the imperceivable errors, we design Adaptive Offset Framework (AOF) to improve the TI signal reconstruction under realistic network settings. We use AOF to highlight the contradictory inferences drawn by objective and subjective evaluations while realizing that subjective evaluations are closer to ground truth. This strongly suggests the existence of 'blind spots of objective measures‘. Further, we show that AOF significantly improves the user grade, up to 3 points (on a scale of 10) compared to the standard reconstruction method.
客观测量的盲点:利用沉浸式触觉网络的不可感知误差
触觉互联网(TI)使人类技能的转移通过互联网,使远程操作与力反馈。在几个方面正在迅速取得进展,以很快实现功能性TI。通常,TI期望在另一端忠实地再现操作员的动作,其中机械臂模拟它,同时向操作员提供力反馈。TI的性能通常使用客观指标来表征,例如网络延迟、数据包丢失和RMSE。同样,主观评估被用作额外的验证,性能评估本身并不主要基于用户体验。因此,客观的评估,通常是最大限度地减少误差(信号不匹配),是无视主观经验。在本文中,我们认为以用户为中心的TI解决方案设计是必要的。我们首先考虑一些常见的TI错误,并检查它们的可感知性。我们的想法是减少可感知错误的影响,并利用不可感知错误为我们的优势,而客观指标可能表明错误很高。为了利用不可感知的误差,我们设计了自适应偏移框架(AOF)来改善在现实网络设置下的TI信号重建。我们使用AOF来突出客观评价和主观评价得出的相互矛盾的推论,同时认识到主观评价更接近基本事实。这强烈表明存在“客观衡量的盲点”。此外,我们表明,与标准重建方法相比,AOF显着提高了用户等级,高达3分(满分为10分)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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