ROSDASMar 2, 2019

Making Sense of Audio Vibration for Liquid Height Estimation in Robotic Pouring

arXiv:1903.00650v249 citations
AI Analysis

This addresses the challenge of poor generalization in robotic pouring for opaque containers, though it is incremental as it introduces a new sensing modality.

The paper tackles the perception problem in robotic pouring by using audio vibration sensing to estimate liquid height, achieving robust generalization across different containers, positions, and liquids.

In this paper, we focus on the challenging perception problem in robotic pouring. Most of the existing approaches either leverage visual or haptic information. However, these techniques may suffer from poor generalization performances on opaque containers or concerning measuring precision. To tackle these drawbacks, we propose to make use of audio vibration sensing and design a deep neural network PouringNet to predict the liquid height from the audio fragment during the robotic pouring task. PouringNet is trained on our collected real-world pouring dataset with multimodal sensing data, which contains more than 3000 recordings of audio, force feedback, video and trajectory data of the human hand that performs the pouring task. Each record represents a complete pouring procedure. We conduct several evaluations on PouringNet with our dataset and robotic hardware. The results demonstrate that our PouringNet generalizes well across different liquid containers, positions of the audio receiver, initial liquid heights and types of liquid, and facilitates a more robust and accurate audio-based perception for robotic pouring.

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