Title :
Data-driven modeling of isotropic haptic textures using frequency-decomposed neural networks
Author :
Sunghwan Shin ; Osgouei, Reza Haghighi ; Ki-Duk Kim ; Seungmoon Choi
Author_Institution :
Dept. of Comput. Sci. & Eng., Haptic & Virtual Reality Lab., Geyongbuk, South Korea
Abstract :
This paper presents a new approach to data-driven modeling of isotropic haptic textures using frequency-decomposed neural networks from the contact acceleration data that are captured when a stylus is scanned on a textured surface with diverse scanning velocities and normal forces. We first describe a motorized texture scanner that was developed for accurate and easy data collection under a wide variety of conditions. We then propose two neural network models with different topologies: a unified model that feeds all of acceleration data, scanning velocity, and normal force as input variables to a single large neural network and a decomposed model that consists of a number of smaller neural networks each of which is trained with the acceleration data for a pair of scanning velocity and normal force. An experiment with real samples showed that the unified model has better cross-validation ability in terms of spectral rms errors and its performance is comparable to the best available in the literature. We also present some preliminary results of anisotropic texture modeling achieved by extending the unified model.
Keywords :
haptic interfaces; mean square error methods; neural nets; surface texture; contact acceleration data; data-driven modeling; frequency-decomposed neural networks; isotropic haptic textures; motorized texture scanner; neural network models; normal forces; root mean square errors; scanning velocities; scanning velocity; spectral RMS errors; stylus; textured surface; topologies; Acceleration; Autoregressive processes; Data models; Force; Haptic interfaces; Neural networks; Vibrations;
Conference_Titel :
World Haptics Conference (WHC), 2015 IEEE
Conference_Location :
Evanston, IL
DOI :
10.1109/WHC.2015.7177703