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Publication

Trade-off between Accuracy and Computational Cost with Neural Architecture Search: a Novel Smart Tactile Sensing Systems Design

Published in: IEEE
Year: 2023
Authors: Christian Gianoglio, Edoardo Ragusa, Paolo Gastaldo, and Maurizio Valle
Project Member: UNIGE
Abstract

This letter presents a neural architecture search to optimize tactile elaboration systems taking into account the computational cost of the whole pipeline consisting of data preprocessing and a convolutional neural network (CNN) model to extract information. The strategy is exploited to train standard 1-D CNNs and binary CNNs on a three-class touch modality classification dataset. The experimental results show that systems based on standard CNNs outperform state-of-the-art techniques in terms of accuracy and computational cost, while the ones based on binary CNNs further reduce the computational cost with a small accuracy drop.