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Main Authors: Funabashi, Satoshi, Hiramoto, Atsumu, Chiba, Naoya, Schmitz, Alexander, Kulkarni, Shardul, Ogata, Tetsuya
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.07757
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author Funabashi, Satoshi
Hiramoto, Atsumu
Chiba, Naoya
Schmitz, Alexander
Kulkarni, Shardul
Ogata, Tetsuya
author_facet Funabashi, Satoshi
Hiramoto, Atsumu
Chiba, Naoya
Schmitz, Alexander
Kulkarni, Shardul
Ogata, Tetsuya
contents To achieve a desired grasping posture (including object position and orientation), multi-finger motions need to be conducted according to the the current touch state. Specifically, when subtle changes happen during correcting the object state, not only proprioception but also tactile information from the entire hand can be beneficial. However, switching motions with high-DOFs of multiple fingers and abundant tactile information is still challenging. In this study, we propose a loss function with constraints of touch states and an attention mechanism for focusing on important modalities depending on the touch states. The policy model is AE-LSTM which consists of Autoencoder (AE) which compresses abundant tactile information and Long Short-Term Memory (LSTM) which switches the motion depending on the touch states. Motion for cap-opening was chosen as a target task which consists of subtasks of sliding an object and opening its cap. As a result, the proposed method achieved the best success rates with a variety of objects for real time cap-opening manipulation. Furthermore, we could confirm that the proposed model acquired the features of each subtask and attention on specific modalities.
format Preprint
id arxiv_https___arxiv_org_abs_2503_07757
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Focused Blind Switching Manipulation Based on Constrained and Regional Touch States of Multi-Fingered Hand Using Deep Learning
Funabashi, Satoshi
Hiramoto, Atsumu
Chiba, Naoya
Schmitz, Alexander
Kulkarni, Shardul
Ogata, Tetsuya
Robotics
To achieve a desired grasping posture (including object position and orientation), multi-finger motions need to be conducted according to the the current touch state. Specifically, when subtle changes happen during correcting the object state, not only proprioception but also tactile information from the entire hand can be beneficial. However, switching motions with high-DOFs of multiple fingers and abundant tactile information is still challenging. In this study, we propose a loss function with constraints of touch states and an attention mechanism for focusing on important modalities depending on the touch states. The policy model is AE-LSTM which consists of Autoencoder (AE) which compresses abundant tactile information and Long Short-Term Memory (LSTM) which switches the motion depending on the touch states. Motion for cap-opening was chosen as a target task which consists of subtasks of sliding an object and opening its cap. As a result, the proposed method achieved the best success rates with a variety of objects for real time cap-opening manipulation. Furthermore, we could confirm that the proposed model acquired the features of each subtask and attention on specific modalities.
title Focused Blind Switching Manipulation Based on Constrained and Regional Touch States of Multi-Fingered Hand Using Deep Learning
topic Robotics
url https://arxiv.org/abs/2503.07757