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Towards a Multispectral RGB-IR-UV-D Vision System -- Seeing the Invisible in 3D

2021-08-19 04:36:50
Tanhao Zhang, Luyin Hu, Lu Li, David Navarro-Alarcon

Abstract

In this paper, we present the development of a sensing system with the capability to compute multispectral point clouds in real-time. The proposed multi-eye sensor system effectively registers information from the visible, (long-wave) infrared, and ultraviolet spectrum to its depth sensing frame, thus enabling to measure a wider range of surface features that are otherwise hidden to the naked eye. For that, we designed a new cross-calibration apparatus that produces consistent features which can be sensed by each of the cameras, therefore, acting as a multispectral "chessboard". The performance of the sensor is evaluated with two different cases of studies, where we show that the proposed system can detect "hidden" features of a 3D environment.

Abstract (translated)

URL

https://arxiv.org/abs/2108.08494

PDF

https://arxiv.org/pdf/2108.08494.pdf


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