A human explores the world around him through his sense to touch. Touch sensation enables us to understand shape, texture and hardness of an object/surface necessary for efficient exploration. Incorporating artificial haptic sensory systems in rehabilitative aids and in various other human computer interfaces enhances the dexterity. This paper presents a novel approach of shape reconstruction and classification from the tactile images by touching the surface of various real life objects. Here four objects (viz. a planar surface, object with one edge, a cuboid i.e. object with two edges and a cylindrical object) have been used for the shape recognition purpose. A new gradient based feature extraction technique has been used for the classification purpose. The reconstruction algorithm also uses image gradients to differentiate between a surface having continuous curvature and a surface having sharp edge. Prewitt masks are used for determining the gradients. A comparison between the performances of different classifiers has been drawn to prove the efficacy of the shape classification algorithm.
Anwesha KhasnobishGarima SinghArindam JatiAmit KonarD. N. Tibarewala
Shreyasi DattaAnwesha KhasnobishAmit KonarD. N. TibarewalaR. Janarthanan
Shreyasi DattaAnwesha KhasnobishAmit KonarD. N. TibarewalaR. Janarthanan
Lukas MerkerChristoph WillJoachim SteigenbergerCarsten Behn