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Main Authors: Li, Ziteng, Kuhlmann, Malte, Nisky, Ilana, Navarro-Guerrero, Nicolás
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.14980
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author Li, Ziteng
Kuhlmann, Malte
Nisky, Ilana
Navarro-Guerrero, Nicolás
author_facet Li, Ziteng
Kuhlmann, Malte
Nisky, Ilana
Navarro-Guerrero, Nicolás
contents Compliance is a critical parameter for describing objects in engineering, agriculture, and biomedical applications. Traditional compliance detection methods are limited by their lack of portability and scalability, rely on specialized, often expensive equipment, and are unsuitable for robotic applications. Moreover, existing neural network-based approaches using vision-based tactile sensors still suffer from insufficient prediction accuracy. In this paper, we propose two models based on Long-term Recurrent Convolutional Networks (LRCNs) and Transformer architectures that leverage RGB tactile images and other information captured by the vision-based sensor GelSight to predict compliance metrics accurately. We validate the performance of these models using multiple metrics and demonstrate their effectiveness in accurately estimating compliance. The proposed models exhibit significant performance improvement over the baseline. Additionally, we investigated the correlation between sensor compliance and object compliance estimation, which revealed that objects that are harder than the sensor are more challenging to estimate.
format Preprint
id arxiv_https___arxiv_org_abs_2506_14980
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Advances in Compliance Detection: Novel Models Using Vision-Based Tactile Sensors
Li, Ziteng
Kuhlmann, Malte
Nisky, Ilana
Navarro-Guerrero, Nicolás
Computer Vision and Pattern Recognition
Robotics
I.2.9
Compliance is a critical parameter for describing objects in engineering, agriculture, and biomedical applications. Traditional compliance detection methods are limited by their lack of portability and scalability, rely on specialized, often expensive equipment, and are unsuitable for robotic applications. Moreover, existing neural network-based approaches using vision-based tactile sensors still suffer from insufficient prediction accuracy. In this paper, we propose two models based on Long-term Recurrent Convolutional Networks (LRCNs) and Transformer architectures that leverage RGB tactile images and other information captured by the vision-based sensor GelSight to predict compliance metrics accurately. We validate the performance of these models using multiple metrics and demonstrate their effectiveness in accurately estimating compliance. The proposed models exhibit significant performance improvement over the baseline. Additionally, we investigated the correlation between sensor compliance and object compliance estimation, which revealed that objects that are harder than the sensor are more challenging to estimate.
title Advances in Compliance Detection: Novel Models Using Vision-Based Tactile Sensors
topic Computer Vision and Pattern Recognition
Robotics
I.2.9
url https://arxiv.org/abs/2506.14980