@inproceedings{2624c722d2a64595aad0c9d3cd178f7d,
title = "Surface classification using acceleration signals recorded during human freehand movement",
abstract = "When a tool is used to tap onto an object or it is dragged over the object surface, vibrations are induced in the tool that can be captured using acceleration sensors. Based on these signals, this paper presents an approach for tool-mediated surface classification which is robust against varying scan-time parameters. We examine freehand recordings of 69 textures and propose a classification system that uses perception-related features such as hardness, roughness and friction as well as selected features adapted from speech recognition such as modified cepstral coefficients. We focus on mitigating the effect of varying contact force and hand speed conditions on these features as a prerequisite for a robust machine-learning-based approach for surface classification. Our system works without explicit scan force and velocity measurements. Experimental results show that our proposed approach allows for successful classification of surface textures under varying freehand movement conditions. The proposed features lead to a classification accuracy of 95% when combined with a Naive Bayes Classifier.",
author = "Matti Strese and Clemens Schuwerk and Eckehard Steinbach",
note = "Publisher Copyright: {\textcopyright} 2015 IEEE.; 10th IEEE World Haptics Conference, WHC 2015 ; Conference date: 22-06-2015 Through 26-06-2015",
year = "2015",
month = aug,
day = "4",
doi = "10.1109/WHC.2015.7177716",
language = "English",
series = "IEEE World Haptics Conference, WHC 2015",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
pages = "214--219",
editor = "Colgate, {J. Edward} and Tan, {Hong Z.} and Tan, {Hong Z.} and Seungmoon Choi and Gerling, {Gregory J.}",
booktitle = "IEEE World Haptics Conference, WHC 2015",
}