Towards Universal Haptic Library: Library-Based Haptic Texture Assignment Using Image Texture and Perceptual Space

Authors
Hassan, WaseemAbdulali, ArsenAbdullah, MuhammadAhn, Sang ChulJeon, Seokhee
Issue Date
2018-04
Publisher
IEEE COMPUTER SOC
Citation
IEEE TRANSACTIONS ON HAPTICS, v.11, no.2, pp.291 - 303
Abstract
In this paper, we focused on building a universal haptic texture models library and automatic assignment of haptic texture models to any given surface from the library based on image features. It is shown that a relationship exists between perceived haptic texture and its image features, and this relationship is effectively used for automatic haptic texture model assignment. An image feature space and a perceptual haptic texture space are defined, and the correlation between the two spaces is found. A haptic texture library was built, using 84 real life textured surfaces, by training a multi-class support vector machine with radial basis function kernel. The perceptual space was classified into perceptually similar clusters using K-means. Haptic texture models were assigned to new surfaces in a two step process; classification into a perceptually similar group using the trained multi-class support vector machine, and finding a unique match from within the group using binarized statistical image features. The system was evaluated using 21 new real life texture surfaces and an accuracy of 71.4 percent was achieved in assigning haptic models to these surfaces.
Keywords
DIMENSIONS; INFORMATION; FEATURES; MODELS; DIMENSIONS; INFORMATION; FEATURES; MODELS; Perceptual space; multi-dimensional scaling; image features; psycho-physics
ISSN
1939-1412
URI
https://pubs.kist.re.kr/handle/201004/121561
DOI
10.1109/TOH.2017.2782279
Appears in Collections:
KIST Article > 2018
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