CVIMAug 18, 2022

Lessons from a Space Lab -- An Image Acquisition Perspective

arXiv:2208.08865v223 citationsh-index: 27
Originality Synthesis-oriented
AI Analysis

This work addresses equipment selection for vision-based space applications, but it is incremental as it focuses on a specific lab development process.

The paper tackles the challenge of selecting image acquisition equipment for a space lab to train deep learning models, presenting a systematic approach that combines market survey and experimental analyses, with results indicating that this combined method is required for effective equipment selection.

The use of Deep Learning (DL) algorithms has improved the performance of vision-based space applications in recent years. However, generating large amounts of annotated data for training these DL algorithms has proven challenging. While synthetically generated images can be used, the DL models trained on synthetic data are often susceptible to performance degradation, when tested in real-world environments. In this context, the Interdisciplinary Center of Security, Reliability and Trust (SnT) at the University of Luxembourg has developed the 'SnT Zero-G Lab', for training and validating vision-based space algorithms in conditions emulating real-world space environments. An important aspect of the SnT Zero-G Lab development was the equipment selection. From the lessons learned during the lab development, this article presents a systematic approach combining market survey and experimental analyses for equipment selection. In particular, the article focus on the image acquisition equipment in a space lab: background materials, cameras and illumination lamps. The results from the experiment analyses show that the market survey complimented by experimental analyses is required for effective equipment selection in a space lab development project.

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