SpY: A Context-Based Approach to Spacecraft Component Detection
Trupti Mahendrakar, Ryan T. White, and Madhur Tiwari

TL;DR
This paper introduces SpY, an innovative spacecraft component detection system that combines CNN-based shape detection with contextual knowledge to improve accuracy and reliability in space object identification.
Contribution
It presents a novel modular detector, SpY, integrating CNNs and traditional vision techniques for enhanced spacecraft component detection and classification.
Findings
SpY achieves higher detection accuracy in space environments.
Ensemble with YOLOv5 improves recall by 23.4%.
SpY enhances safety in vision-based space navigation.
Abstract
This paper focuses on autonomously characterizing components such as solar panels, body panels, antennas, and thrusters of an unknown resident space object (RSO) using camera feed to aid autonomous on-orbit servicing (OOS) and active debris removal. Significant research has been conducted in this area using convolutional neural networks (CNNs). While CNNs are powerful at learning patterns and performing object detection, they struggle with missed detections and misclassifications in environments different from the training data, making them unreliable for safety in high-stakes missions like OOS. Additionally, failures exhibited by CNNs are often easily rectifiable by humans using commonsense reasoning and contextual knowledge. Embedding such reasoning in an object detector could improve detection accuracy. To validate this hypothesis, this paper presents an end-to-end object detector…
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Taxonomy
TopicsSpace Satellite Systems and Control
