首页> 外文期刊>ACM Transactions on Applied Perception (TAP) >Design and Analysis of Predictive Sampling of Haptic Signals
【24h】

Design and Analysis of Predictive Sampling of Haptic Signals

机译:触觉信号预测采样的设计与分析

获取原文
获取原文并翻译 | 示例
           

摘要

In this article, we identify adaptive sampling strategies for haptic signals. Our approach relies on experiments wherein we record the response of several users to haptic stimuli. We then learn different classifiers to predict the user response based on a variety of causal signal features. The classifiers that have good prediction accuracy serve as candidates to be used in adaptive sampling. We compare the resultant adaptive samplers based on their rate-distortion tradeoff using synthetic as well as natural data. For our experiments, we use a haptic device with a maximum force level of 3 N and 10 users. Each user is subjected to several piecewise constant haptic signals and is required to click a button whenever he perceives a change in the signal. For classification, we not only use classifiers based on level crossings and Weber's law but also random forests using a variety of causal signal features. The random forest typically yields the best prediction accuracy and a study of the importance of variables suggests that the level crossings and Weber's classifier features are most dominant. The classifiers based on level crossings and Weber's law have good accuracy (more than 90%) and are only marginally inferior to random forests. The level crossings classifier consistently outperforms the one based on Weber's law even though the gap is small. Given their simple parametric form, the level crossings and Weber's law-based classifiers are good candidates to be used for adaptive sampling. We study their rate-distortion performance and find that the level crossing sampler is superior. For example, for haptic signals obtained while exploring various rendered objects, for an average sampling rate of 10 samples per second, the level crossings adaptive sampler has a mean square error about 3dB less than the Weber sampler.
机译:在本文中,我们确定了触觉信号的自适应采样策略。我们的方法依赖于实验,其中我们记录了多个用户对触觉刺激的反应。然后,我们基于各种因果信号特征,学习不同的分类器来预测用户响应。具有良好预测精度的分类器用作在自适应采样中使用的候选。我们使用合成数据和自然数据,基于它们的速率-失真折衷,比较所得的自适应采样器。对于我们的实验,我们使用最大力度为3 N的触觉设备和10个用户。每个用户都受到几个分段恒定的触觉信号,并且每当他察觉到信号的变化时都需要单击一个按钮。对于分类,我们不仅使用基于平交道口和韦伯定律的分类器,而且使用使用各种因果信号特征的随机森林。随机森林通常会产生最佳的预测准确性,并且对变量重要性的研究表明,平交路口和韦伯的分类器特征最为主要。基于平交道口和韦伯定律的分类器具有良好的准确性(超过90%),并且仅次于随机森林。即使差距很小,平交道口分类器也始终优于基于韦伯定律的分类器。鉴于其简单的参数形式,平交路口和基于韦伯定律的分类器是用于自适应采样的良好候选者。我们研究了它们的速率失真性能,发现该电平交叉采样器具有出色的性能。例如,对于在探索各种渲染对象时获得的触觉信号,对于每秒10个样本的平均采样速率,水平交叉自适应采样器的均方误差比Weber采样器小约3dB。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号