DANAE: a denoising autoencoder for underwater attitude estimation

Paolo Russo, Fabiana Di Ciaccio, Salvatore Troisi
Abstract:
One of the main issues for underwater robots navigation is their accurate positioning, which heavily depends on the orientation estimation phase. The systems employed to this scope are affected by different noise typologies, mainly related to the sensors and to the irregular noise of the underwater environment. Filtering algorithms can reduce their effect if opportunely configured, but this process usually requires fine techniques and time. In this paper we propose DANAE, a deep Denoising AutoeNcoder for Attitude Estimation which works on Kalman filter IMU/AHRS data integration with the aim of reducing any kind of noise, independently of its nature. This deep learningbased architecture showed to be robust and reliable, significantly improving the Kalman filter results. Further tests could make this method suitable for real-time applications on navigation tasks.
Download:
IMEKO-TC19-MetroSea-2020-40.pdf
DOI:
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Event details
IMEKO TC:
TC19
Event name:
MetroSea 2020
Title:

TC19 International Workshop on Metrology for the Sea

Place:
Naples, ITALY
Time:
05 October 2020 - 07 October 2020