Predictive Visuo-Tactile Interactive Perception Framework for Object Properties Inference
Anirvan Dutta, Etienne Burdet, Mohsen Kaboli

TL;DR
This paper introduces a novel predictive perception framework combining vision and tactile sensing, active exploration, and graph neural networks to accurately infer physical object properties for autonomous robotic manipulation.
Contribution
It presents a new active shape perception method and dual differentiable filtering with GNNs for improved property inference in diverse objects.
Findings
Outperforms state-of-the-art baseline in object property inference
Enables effective object tracking and environment change detection
Demonstrates applicability in goal-driven robotic tasks
Abstract
Interactive exploration of the unknown physical properties of objects such as stiffness, mass, center of mass, friction coefficient, and shape is crucial for autonomous robotic systems operating continuously in unstructured environments. Precise identification of these properties is essential to manipulate objects in a stable and controlled way, and is also required to anticipate the outcomes of (prehensile or non-prehensile) manipulation actions such as pushing, pulling, lifting, etc. Our study focuses on autonomously inferring the physical properties of a diverse set of various homogeneous, heterogeneous, and articulated objects utilizing a robotic system equipped with vision and tactile sensors. We propose a novel predictive perception framework for identifying object properties of the diverse objects by leveraging versatile exploratory actions: non-prehensile pushing and prehensile…
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Taxonomy
TopicsTactile and Sensory Interactions · Interactive and Immersive Displays · Visual Attention and Saliency Detection
