Analyzing Material Recognition Performance of Thermal Tactile Sensing using a Large Materials Database and a Real Robot
Haoping Bai, Haofeng Chen, Elizabeth Healy, Charles C. Kemp,, Tapomayukh Bhattacharjee

TL;DR
This study evaluates thermal tactile sensing for material recognition using a large database and real robot data, analyzing factors affecting performance and providing guidelines for sensor design.
Contribution
It introduces a comprehensive analysis of thermal recognition performance with simulated and real data, and offers insights for improving tactile sensing in robotics.
Findings
High prediction accuracy with simulated data (F1 0.980)
Excellent real-world recognition performance (F1 0.994)
Moderate sim-to-real transfer accuracy (F1 0.815)
Abstract
In this paper we focus on analyzing the thermal modality of tactile sensing for material recognition using a large materials database. Many factors affect thermal recognition performance, including sensor noise, the initial temperatures of the sensor and the object, the thermal effusivities of the materials, and the duration of contact. To analyze the influence of these factors on thermal recognition, we used a semi-infinite solid based thermal model to simulate heat-transfer data from all the materials in the CES Edupack Level-1 database. We used support-vector machines (SVMs) to predict F1 scores for binary material recognition for 2346 material pairs. We also collected data using a real robot equipped with a thermal sensor and analyzed its material recognition performance on 66 real-world material pairs. Additionally, we analyzed the performance when the models were trained on the…
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Taxonomy
TopicsAdvanced Sensor and Energy Harvesting Materials · Advanced Chemical Sensor Technologies · Machine Learning in Materials Science
