Classification of Household Materials via Spectroscopy

international conference on robotics and automation(2019)

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摘要
Recognizing an objectu0027s material can inform a robot on the objectu0027s fragility or appropriate use. To estimate an objectu0027s material during manipulation, many prior works have explored the use of haptic sensing. In this letter, we explore a technique for robots to estimate the materials of objects using spectroscopy. We demonstrate that spectrometers provide several benefits for material recognition, including fast response times and accurate measurements with low noise. Furthermore, spectrometers do not require direct contact with an object. To explore this, we collected a dataset of spectral measurements from two commercially available spectrometers during which a robotic platform interacted with 50 flat material objects, and we show that a neural network model can accurately analyze these measurements. Due to the similarity between consecutive spectral measurements, our model achieved a material classification accuracy of 94.6% when given only one spectral sample per object. Similar to prior works with haptic sensors, we found that generalizing material recognition to new objects posed a greater challenge, for which we achieved an accuracy of 79.1% via leave-one-object-out cross validation. Finally, we demonstrate how a PR2 robot can leverage spectrometers to estimate the materials of everyday objects found in the home. From this letter, we find that spectroscopy poses a promising approach for material classification during robotic manipulation.
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关键词
Robot sensing systems,Spectroscopy,Haptic interfaces,Wavelength measurement,Temperature measurement
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