CVLGRODec 3, 2024

Understanding Particles From Video: Property Estimation of Granular Materials via Visuo-Haptic Learning

arXiv:2412.02119v13 citationsh-index: 6IEEE Robot Autom Lett
Originality Incremental advance
AI Analysis

This addresses the challenge of efficiently analyzing granular material properties in agriculture and industry, though it appears incremental as it builds on visuo-haptic learning frameworks.

The paper tackles the problem of estimating particle size and density of granular materials from video, eliminating the need for dedicated equipment and manual labeling, achieving results validated through experiments and a real-world beach application.

Granular materials (GMs) are ubiquitous in daily life. Understanding their properties is also important, especially in agriculture and industry. However, existing works require dedicated measurement equipment and also need large human efforts to handle a large number of particles. In this paper, we introduce a method for estimating the relative values of particle size and density from the video of the interaction with GMs. It is trained on a visuo-haptic learning framework inspired by a contact model, which reveals the strong correlation between GM properties and the visual-haptic data during the probe-dragging in the GMs. After training, the network can map the visual modality well to the haptic signal and implicitly characterize the relative distribution of particle properties in its latent embeddings, as interpreted in that contact model. Therefore, we can analyze GM properties using the trained encoder, and only visual information is needed without extra sensory modalities and human efforts for labeling. The presented GM property estimator has been extensively validated via comparison and ablation experiments. The generalization capability has also been evaluated and a real-world application on the beach is also demonstrated. Experiment videos are available at \url{https://sites.google.com/view/gmwork/vhlearning} .

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