ChiNet: deep recurrent convolutional learning for multimodal spacecraft pose estimation

Date

2022-07-22

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IEEE

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Article

ISSN

0018-9251

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Citation

Rondao D, Aouf N, Richardson MA. (2023) ChiNet: deep recurrent convolutional learning for multimodal spacecraft pose estimation. IEEE Transactions on Aerospace and Electronic Systems, Volume 59, Issue 2, April 2023, pp. 937-949

Abstract

This paper presents an innovative deep learning pipeline which estimates the relative pose of a spacecraft by incorporating the temporal information from a rendezvous sequence. It leverages the performance of long short-term memory (LSTM) units in modelling sequences of data for the processing of features extracted by a convolutional neural network (CNN) backbone. Three distinct training strategies, which follow a coarse-to-fine funnelled approach, are combined to facilitate feature learning and improve end-to-end pose estimation by regression. The capability of CNNs to autonomously ascertain feature representations from images is exploited to fuse thermal infrared data with electro-optical red-green-blue (RGB) inputs, thus mitigating the effects of artifacts from imaging space objects in the visible wavelength. Each contribution of the proposed framework, dubbed ChiNet, is demonstrated on a synthetic dataset, and the complete pipeline is validated on experimental data.

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Github

Keywords

Feature extraction, Pose estimation, Space vehicles, Solid modeling, Task analysis, Estimation, Convolutional neural networks

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Attribution-NonCommercial 4.0 International

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