ROMar 19

Contact Status Recognition and Slip Detection with a Bio-inspired Tactile Hand

arXiv:2603.183704.7h-index: 3
Predicted impact top 84% in RO · last 90 daysOriginality Incremental advance
AI Analysis

This addresses the problem of reliable grasp control for robots handling fragile objects in unstructured environments, representing an incremental improvement over threshold-based methods.

The paper tackled slip detection for robotic grasping by converting it to contact status recognition using multimodal tactile feedback from a bio-inspired hand, achieving 96.39% accuracy across various sliding speeds and materials and 91.95% on unseen materials.

Stable and reliable grasp is critical to robotic manipulations especially for fragile and glazed objects, where the grasp force requires precise control as too large force possibly damages the objects while small force leads to slip and fall-off. Although it is assumed the objects to manipulate is grasped firmly in advance, slip detection and timely prevention are necessary for a robot in unstructured and universal environments. In this work, we addressed this issue by utilizing multimodal tactile feedback from a five-fingered bio-inspired hand. Motivated by human hands, the tactile sensing elements were distributed and embedded into the soft skin of robotic hand, forming 24 tactile channels in total. Different from the threshold method that was widely employed in most existing works, we converted the slip detection problem to contact status recognition in combination with binning technique first and then detected the slip onset time according to the recognition results. After the 24-channel tactile signals passed through discrete wavelet transform, 17 features were extracted from different time and frequency bands. With the optimal 120 features employed for status recognition, the test accuracy reached 96.39% across three different sliding speeds and six kinds of materials. When applied to four new unseen materials, a high accuracy of 91.95% was still achieved, which further validated the generalization of our proposed method. Finally, the performance of slip detection is verified based on the trained model of contact status recognition.

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