Scimeca, LucaHughes, JosieMaiolino, PerlaHe, LiangNanayakkara, ThrishanthaIida, Fumiya2022-08-092022-08-092022-08-09202210.1089/soro.2020.0129https://infoscience.epfl.ch/handle/20.500.14299/189859Medical palpation is a diagnostic technique in which physicians use the sense of touch to manipulate the soft human tissue. This can be done to enable the diagnosis of possibly life-threatening conditions, such as cancer. Palpation is still poorly understood because of the complex interaction dynamics between the practitioners' hands and the soft human body. To understand this complex of soft body interactions, we explore robotic palpation for the purpose of diagnosing the presence of abnormal inclusions, or tumors. Using a Bayesian framework for training and classification, we show that the exploration of soft bodies requires complex, multi-axis, palpation trajectories. We also find that this probabilistic approach is capable of rapidly searching the large action space of the robot. This work progresses "robotic"palpation, and it provides frameworks for understanding and exploiting soft body interactions. © Luca Scimeca et al. 2022; Published by Mary Ann Liebert, Inc. 2022.RoboticsDiagnosisRoboticsDiagnostics techniquesHapticsSense of touchSoft hapticSoft tactile perceptionSoft tissueSoft tissue palpationSoft-bodiesTactile perceptionTissue palpationsTissueBayes theoremhumanpalpationproceduresroboticstouchBayes TheoremHumansPalpationRoboticsTouchTouch PerceptionAction augmentation of tactile perception for soft-body palpationtext::journal::journal article::research article