Tactile-ViewGCN: Learning Shape Descriptor from Tactile Data using Graph Convolutional Network
Sachidanand V S, Mansi Sharma

TL;DR
This paper introduces Tactile-ViewGCN, a graph convolutional network-based approach that hierarchically aggregates tactile features to improve object shape classification accuracy from tactile data.
Contribution
It presents a novel hierarchical feature aggregation method using GCNs for tactile data, outperforming previous approaches on the STAG dataset.
Findings
Achieved 81.82% accuracy on STAG dataset
Outperformed previous tactile classification methods
Demonstrated effectiveness of hierarchical GCN feature aggregation
Abstract
For humans, our "senses of touch" have always been necessary for our ability to precisely and efficiently manipulate objects of all shapes in any environment, but until recently, not many works have been done to fully understand haptic feedback. This work proposed a novel method for getting a better shape descriptor than existing methods for classifying an object from multiple tactile data collected from a tactile glove. It focuses on improving previous works on object classification using tactile data. The major problem for object classification from multiple tactile data is to find a good way to aggregate features extracted from multiple tactile images. We propose a novel method, dubbed as Tactile-ViewGCN, that hierarchically aggregate tactile features considering relations among different features by using Graph Convolutional Network. Our model outperforms previous methods on the…
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Taxonomy
TopicsTactile and Sensory Interactions · EEG and Brain-Computer Interfaces · Gaze Tracking and Assistive Technology
