Active Exploration for Real-Time Haptic Training (2405.11776v1)
Abstract: Tactile perception is important for robotic systems that interact with the world through touch. Touch is an active sense in which tactile measurements depend on the contact properties of an interaction--e.g., velocity, force, acceleration--as well as properties of the sensor and object under test. These dependencies make training tactile perceptual models challenging. Additionally, the effects of limited sensor life and the near-field nature of tactile sensors preclude the practical collection of exhaustive data sets even for fairly simple objects. Active learning provides a mechanism for focusing on only the most informative aspects of an object during data collection. Here we employ an active learning approach that uses a data-driven model's entropy as an uncertainty measure and explore relative to that entropy conditioned on the sensor state variables. Using a coverage-based ergodic controller, we train perceptual models in near-real time. We demonstrate our approach using a biomimentic sensor, exploring "tactile scenes" composed of shapes, textures, and objects. Each learned representation provides a perceptual sensor model for a particular tactile scene. Models trained on actively collected data outperform their randomly collected counterparts in real-time training tests. Additionally, we find that the resulting network entropy maps can be used to identify high salience portions of a tactile scene.
- D. P. Kingma and M. Welling, “Auto-Encoding Variational Bayes,” Dec. 2022.
- A. Kumar and B. Poole, “On Implicit Regularization in VAEs,” Dec. 2020.
- K. Sohn, H. Lee, and X. Yan, “Learning Structured Output Representation using Deep Conditional Generative Models,” in Advances in Neural Information Processing Systems, vol. 28, 2015.
- Y. Zhang, X. Xie, H. Li, and B. Zhou, “An Unsupervised Tunnel Damage Identification Method Based on Convolutional Variational Auto-Encoder and Wavelet Packet Analysis,” Sensors, vol. 22, no. 6, p. 2412, Jan. 2022, number: 6 Publisher: Multidisciplinary Digital Publishing Institute.
- X. Zhu, S. K. Damarla, K. Hao, and B. Huang, “Parallel Interaction Spatiotemporal Constrained Variational Autoencoder for Soft Sensor Modeling,” IEEE Transactions on Industrial Informatics, vol. 18, no. 8, pp. 5190–5198, Aug. 2022.
- J. Wang, S. Li, D. Cheng, L. Zhou, C. Chen, and W. Chen, “CVAE: An Efficient and Flexible Approach for Sparse Aperture ISAR Imaging,” IEEE Geoscience and Remote Sensing Letters, vol. 20, pp. 1–5, 2023, conference Name: IEEE Geoscience and Remote Sensing Letters.
- S. Dixit and N. K. Verma, “Intelligent Condition-Based Monitoring of Rotary Machines With Few Samples,” IEEE Sensors Journal, vol. 20, no. 23, pp. 14 337–14 346, Dec. 2020.
- X. Wang and H. Liu, “Data supplement for a soft sensor using a new generative model based on a variational autoencoder and Wasserstein GAN,” Journal of Process Control, vol. 85, pp. 91–99, Jan. 2020.
- M. Itkina, Y.-J. Mun, K. Driggs-Campbell, and M. J. Kochenderfer, “Multi-Agent Variational Occlusion Inference Using People as Sensors,” in 2022 International Conference on Robotics and Automation (ICRA), May 2022, pp. 4585–4591.
- D. A. Cohn, Z. Ghahramani, and M. I. Jordan, “Active Learning with Statistical Models,” Feb. 1996.
- I. Abraham and T. D. Murphey, “Active Learning of Dynamics for Data-Driven Control Using Koopman Operators,” Jun. 2019.
- A. Prabhakar and T. Murphey, “Mechanical intelligence for learning embodied sensor-object relationships,” Nature Communications, vol. 13, no. 1, p. 4108, Jul. 2022.
- C. H. Lin, T. W. Erickson, J. A. Fishel, N. Wettels, and G. E. Loeb, “Signal processing and fabrication of a biomimetic tactile sensor array with thermal, force and microvibration modalities,” in 2009 IEEE International Conference on Robotics and Biomimetics (ROBIO), Dec. 2009, pp. 129–134.
- J. A. Fishel and G. E. Loeb, “Sensing tactile microvibrations with the BioTac ; Comparison with human sensitivity,” in 2012 4th IEEE RAS & EMBS International Conference on Biomedical Robotics and Biomechatronics (BioRob). Rome, Italy: IEEE, Jun. 2012, pp. 1122–1127.
- J. Fishel and G. Loeb, “Bayesian exploration for intelligent identification of textures,” 2012.
- T. Taunyazov, “Fast Texture Classification Using Tactile Neural Coding and Spiking Neural Network,” IEEE XPlore, 2020.
- J. Reinecke, A. Dietrich, F. Schmidt, and M. Chalon, “Experimental comparison of slip detection strategies by tactile sensing with the BioTac® on the DLR hand arm system,” in 2014 IEEE International Conference on Robotics and Automation (ICRA), May 2014, pp. 2742–2748.
- J. Liang, A. Handa, K. V. Wyk, V. Makoviychuk, O. Kroemer, and D. Fox, “In-Hand Object Pose Tracking via Contact Feedback and GPU-Accelerated Robotic Simulation,” in 2020 IEEE International Conference on Robotics and Automation (ICRA), May 2020, pp. 6203–6209, iSSN: 2577-087X.
- J. A. Fishel, T. Oliver, M. Eichermueller, G. Barbieri, E. Fowler, T. Hartikainen, L. Moss, and R. Walker, “Tactile Telerobots for Dull, Dirty, Dangerous, and Inaccessible Tasks,” in 2020 IEEE International Conference on Robotics and Automation (ICRA), May 2020, pp. 11 305–11 310.
- C. Pacchierotti, D. Prattichizzo, and K. J. Kuchenbecker, “Cutaneous Feedback of Fingertip Deformation and Vibration for Palpation in Robotic Surgery,” IEEE Transactions on Biomedical Engineering, vol. 63, no. 2, pp. 278–287, Feb. 2016.
- Y. S. Narang, B. Sundaralingam, K. Van Wyk, A. Mousavian, and D. Fox, “Interpreting and predicting tactile signals for the SynTouch BioTac,” The International Journal of Robotics Research, vol. 40, no. 12-14, pp. 1467–1487, Dec. 2021.
- Y. Chebotar, K. Hausman, Z. Su, A. Molchanov, O. Kroemer, G. Sukhatme, and S. Schaal, “BiGS: BioTac Grasp Stability Dataset,” 2016.
- K. He, X. Zhang, S. Ren, and J. Sun, “Delving Deep into Rectifiers: Surpassing Human-Level Performance on ImageNet Classification,” Feb. 2015.
- G. Mathew and I. Mezić, “Metrics for ergodicity and design of ergodic dynamics for multi-agent systems,” Physica D: Nonlinear Phenomena, vol. 240, no. 4, pp. 432–442, Feb. 2011.
- I. Abraham, A. Prabhakar, and T. D. Murphey, “An Ergodic Measure for Active Learning From Equilibrium,” IEEE Transactions on Automation Science and Engineering, vol. 18, no. 3, pp. 917–931, Jul. 2021.
- M. A. Plaisier, W. M. Bergmann Tiest, and A. M. L. Kappers, “Salient features in 3-D haptic shape perception,” Attention, Perception, & Psychophysics, vol. 71, no. 2, pp. 421–430, Feb. 2009.
- J. Platkiewicz, H. Lipson, and V. Hayward, “Haptic Edge Detection Through Shear,” Scientific Reports, vol. 6, no. 1, p. 23551, Mar. 2016.
- N. F. Lepora, A. Church, C. de Kerckhove, R. Hadsell, and J. Lloyd, “From Pixels to Percepts: Highly Robust Edge Perception and Contour Following Using Deep Learning and an Optical Biomimetic Tactile Sensor,” IEEE Robotics and Automation Letters, vol. 4, no. 2, pp. 2101–2107, Apr. 2019.