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Latent Object Characteristics Recognition with Visual to Haptic-Audio Cross-Modal Transfer Learning

Namiko Saito, Joao Moura, Hiroki Uchida, Sethu Vijayakumar

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Abstract

Recognising the characteristics of objects while a robot handles them is crucial for adjusting motions that ensure stable and efficient interactions with containers. Ahead of realis- ing stable and efficient robot motions for handling/transferring the containers, this work aims to recognise the unobservable latent object characteristics. While vision is commonly used for object recognition by robots, it is ineffective for detecting hidden objects. However, recognising objects indirectly using other sensors is a challenging task. To address this challenge, we propose a cross-modal transfer learning approach from vision to haptic-audio. We initially train the model with vision, directly observing the target object. Subsequently, we transfer the latent space learned from vision to a second module, trained only with haptic-audio and motor data. This transfer learning framework facilitates the representation of object characteristics using indirect sensor data, thereby improving recognition accuracy. For evaluating the recognition accuracy of our proposed learn- ing framework we selected shape, position, and orientation as the object characteristics. Finally, we demonstrate online recognition of both trained and untrained objects using the hu- manoid robot Nextage Open. See our accompanying video here: https://www.youtube.com/watch?v=sOHqPC1uusg

Index terms

Representation Learning Sensorimotor Learning Perception for Grasping and Manipulation