Glove-Net: Enhancing Grasp Classification with Multisensory Data and Deep Learning Approach

Author:

Pratap Subhash12ORCID,Narayan Jyotindra34ORCID,Hatta Yoshiyuki2,Ito Kazuaki2ORCID,Hazarika Shyamanta M.1ORCID

Affiliation:

1. Department of Mechanical Engineering, Indian Institute of Technology Guwahati, Guwahati 781039, India

2. Department of Mechanical Engineering, Gifu University, Gifu 501-1193, Japan

3. Department of Computing, Imperial College London, London SW7 2RH, UK

4. Chair of Digital Health, Universität Bayreuth, 95445 Bayreuth, Germany

Abstract

Grasp classification is pivotal for understanding human interactions with objects, with wide-ranging applications in robotics, prosthetics, and rehabilitation. This study introduces a novel methodology utilizing a multisensory data glove to capture intricate grasp dynamics, including finger posture bending angles and fingertip forces. Our dataset comprises data collected from 10 participants engaging in grasp trials with 24 objects using the YCB object set. We evaluate classification performance under three scenarios: utilizing grasp posture alone, utilizing grasp force alone, and combining both modalities. We propose Glove-Net, a hybrid CNN-BiLSTM architecture for classifying grasp patterns within our dataset, aiming to harness the unique advantages offered by both CNNs and BiLSTM networks. This model seamlessly integrates CNNs’ spatial feature extraction capabilities with the temporal sequence learning strengths inherent in BiLSTM networks, effectively addressing the intricate dependencies present within our grasping data. Our study includes findings from an extensive ablation study aimed at optimizing model configurations and hyperparameters. We quantify and compare the classification accuracy across these scenarios: CNN achieved 88.09%, 69.38%, and 93.51% testing accuracies for posture-only, force-only, and combined data, respectively. LSTM exhibited accuracies of 86.02%, 70.52%, and 92.19% for the same scenarios. Notably, the hybrid CNN-BiLSTM proposed model demonstrated superior performance with accuracies of 90.83%, 73.12%, and 98.75% across the respective scenarios. Through rigorous numerical experimentation, our results underscore the significance of multimodal grasp classification and highlight the efficacy of the proposed hybrid Glove-Net architectures in leveraging multisensory data for precise grasp recognition. These insights advance understanding of human–machine interaction and hold promise for diverse real-world applications.

Funder

DST, Government of India

Publisher

MDPI AG

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