Finding a Needle in a Haystack: Faint and Small Space Object Detection in 16-Bit Astronomical Images Using a Deep Learning-Based Approach

Author:

Jiang Yunxiao1ORCID,Tang Yijun1,Ying Chenchen1

Affiliation:

1. College of Science, Zhejiang University of Technology, Hangzhou 310014, China

Abstract

With the increasing interest in space science exploration, the number of spacecraft in Earth’s orbit has been steadily increasing. To ensure the safety and operational integrity of active satellites, advanced surveillance and early warning of unknown space objects such as space debris are crucial. The traditional threshold-based filter for space object detection heavily relies on manual settings, leading to limitations such as poor flexibility, high false alarm rates, and weak target detection capability in low signal-to-noise ratios. Therefore, detecting faint and small objects against a complex starry background remains a formidable challenge. To address this challenge, we propose a novel, intelligent, and accurate detection method called You Only Look Once for Space Object Detection (SOD-YOLO). Our method includes the following novel modules: Multi-Channel Histogram Truncation (MHT) enhances feature representation, CD-ELAN based on Central Differential Convolution (CDC) facilitates learning contrast information, the Space-to-Depth (SPD) module replaces pooling layer to prevent small object feature loss, a simple and parameter-free attention module (SimAM) expands receptive field for Global Contextual Information, and Alpha-EIoU optimizes the loss function for efficient training. Experiments on our SSOD dataset show SOD-YOLO has the ability to detect objects with a minimum signal-to-noise ratio of 2.08, improves AP by 11.2% compared to YOLOv7, and enhances detection speed by 42.7%. Evaluation on the Spot the Geosynchronous Orbit Satellites (SpotGEO) dataset demonstrates SOD-YOLO’s comparable performance to state-of-the-art methods, affirming its generalization and precision.

Funder

National Defense Science and Technology Innovation Special Zone Project Foundation of China

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference46 articles.

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3. European Space Agency (2023, May 27). Space Debris [EB/OL]. Available online: http://m.esa.int/Our_Activities/Operations/Space_Debris/FAQ_Frequently_asked_questions.

4. Efficient and Automatic Image Reduction Framework for Space Debris Detection Based on GPU Technology;Diprima;Acta Astronaut.,2018

5. Guo, J.X. (2023). Research on the Key Technologies of Dim Space Target Detection Based on Deep Learning. [Ph.D. Thesis, University of Chinese Academy of Sciences (Changchun Institute of Optics, Fine Mechanics)].

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