TY - JOUR
T1 - Vision-based tactile sensor design using physically based rendering
AU - Agarwal, Arpit
AU - Wilson, Achu
AU - Man, Timothy
AU - Adelson, Edward
AU - Gkioulekas, Ioannis
AU - Yuan, Wenzhen
N1 - We would like to thank Ashwin Khadke, Akhil Padmanabha, Sandra Liu, and RoboTouch lab members for their helpful advice on the visuals for the paper. This research was partly funded by the Toyota Research Institute, NSF Award 2024646, NSF award 1900849, and Sloan Research Fellowship.
This research was partly funded by the Toyota Research Institute, NSF Award 2024646, NSF award 1900849, and Sloan Research Fellowship.
PY - 2025/12
Y1 - 2025/12
N2 - High-resolution tactile sensors are very helpful to robots for fine-grained perception and manipulation tasks, but designing those sensors is challenging. This is because the designs are based on the compact integration of multiple optical elements, and it is difficult to understand the correlation between the element arrangements and the sensor accuracy by trial and error. In this work, we introduce the digital design of vision-based tactile sensors using a physically accurate light simulator. The framework modularizes the design process, parameterizes the sensor components, and contains an evaluation metric to quantify a sensor’s performance. We quantify the effects of sensor shape, illumination setting, and sensing surface material on tactile sensor performance using our evaluation metric. The proposed optical simulation framework can replicate the tactile image of the real vision-based tactile sensor prototype without any prior sensor-specific data. Using our approach we can substantially improve the design of a fingertip GelSight sensor. This improved design performs approximately 5 times better than previous state-of-the-art human-expert design at real-world robotic tactile embossed text detection. Our simulation approach can be used with any vision-based tactile sensor to produce a physically accurate tactile image. Overall, our approach enables the automatic design of sensorized soft robots and opens the door for closed-loop co-optimization of controllers and sensors for dexterous manipulation.
AB - High-resolution tactile sensors are very helpful to robots for fine-grained perception and manipulation tasks, but designing those sensors is challenging. This is because the designs are based on the compact integration of multiple optical elements, and it is difficult to understand the correlation between the element arrangements and the sensor accuracy by trial and error. In this work, we introduce the digital design of vision-based tactile sensors using a physically accurate light simulator. The framework modularizes the design process, parameterizes the sensor components, and contains an evaluation metric to quantify a sensor’s performance. We quantify the effects of sensor shape, illumination setting, and sensing surface material on tactile sensor performance using our evaluation metric. The proposed optical simulation framework can replicate the tactile image of the real vision-based tactile sensor prototype without any prior sensor-specific data. Using our approach we can substantially improve the design of a fingertip GelSight sensor. This improved design performs approximately 5 times better than previous state-of-the-art human-expert design at real-world robotic tactile embossed text detection. Our simulation approach can be used with any vision-based tactile sensor to produce a physically accurate tactile image. Overall, our approach enables the automatic design of sensorized soft robots and opens the door for closed-loop co-optimization of controllers and sensors for dexterous manipulation.
UR - https://www.scopus.com/pages/publications/85219728649
UR - https://www.scopus.com/pages/publications/85219728649#tab=citedBy
U2 - 10.1038/s44172-025-00350-4
DO - 10.1038/s44172-025-00350-4
M3 - Article
C2 - 39953115
AN - SCOPUS:85219728649
SN - 2731-3395
VL - 4
JO - Communications Engineering
JF - Communications Engineering
IS - 1
M1 - 21
ER -