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Quantitative Softness and Texture Bimodal Haptic Sensors for Robotic Clinical Feature Identification and Intelligent Picking

Ye Qiu, Fangnan Wang,Zhuang Zhang,Kuanqiang Shi, Yi Song, Jiutian Lu, Minjia Xu, Mengyuan Qian,Wenan Zhang, Jixuan Wu,Zheng Zhang,Hao Chai,Aiping Liu,Hanqing Jiang,Huaping Wu

SCIENCE ADVANCES(2024)

Zhejiang Univ Technol

Cited 4|Views22
Abstract
Replicating human somatosensory networks in robots is crucial for dexterous manipulation, ensuring the appropriate grasping force for objects of varying softness and textures. Despite advances in artificial haptic sensing for object recognition, accurately quantifying haptic perceptions to discern softness and texture remains challenging. Here, we report a methodology that uses a bimodal haptic sensor to capture multidimensional static and dynamic stimuli, allowing for the simultaneous quantification of softness and texture features. This method demonstrates synergistic measurements of elastic and frictional coefficients, thereby providing a universal strategy for acquiring the adaptive gripping force necessary for scarless, antislippage interaction with delicate objects. Equipped with this sensor, a robotic manipulator identifies porcine mucosal features with 98.44% accuracy and stably grasps visually indistinguishable mature white strawberries, enabling reliable tissue palpation and intelligent picking. The design concept and comprehensive guidelines presented would provide insights into haptic sensor development, promising benefits for robotics.
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