Litcius/Paper detail

Embedded real-time objects’ hardness classification for robotic grippers

Youssef Amin, Christian Gianoglio, Maurizio Valle

2023Future Generation Computer Systems29 citationsDOIOpen Access PDF

Abstract

Robotic grippers can be equipped with tactile sensing systems to extract information from a manipulated object. The real-time classification of the physical properties of a grasped object on resource-constrained devices requires efficient and effective pre-processing techniques and machine-learning (ML) algorithms. In this paper, we propose a tactile sensing system mounted on the Baxter robot for the hardness classification of objects. In particular, we pre-processed the raw data with low computational cost techniques, and we designed three ML algorithms to provide real-time, energy-efficient, and low-memory impact classification on a resource-constrained microcontroller. Results show that convolutional neural networks (CNNs) achieve the best accuracy (>98%), while the support vector machine (SVM) presents the lowest memory occupation (1576 bytes), inference time (<0.077ms), and energy consumption (<5.74μJ).

Topics & Concepts

Computer scienceGrippersByteArtificial intelligenceRobotSupport vector machineObject (grammar)Convolutional neural networkMachine learningPattern recognition (psychology)Computer hardwareMedicineAnatomyAdvanced Sensor and Energy Harvesting MaterialsTactile and Sensory InteractionsEEG and Brain-Computer Interfaces