A Quality Classification Method for Star Sensor Based on Gray-Scale Distribution Characteristics of Star Maps
LIAN Peng1, YANG Jidong1, YE Songhang2, ZHAN Xiaomin2
1. Shanghai Basic Research Institute of Aerospace Technology, Shanghai 201109, China;
2. Shanghai Aerospace Control Technology Institute, Shanghai 201109, China
Abstract:The traditional manual interpretation methods for star sensor imaging images are ineffective and limit manual interpretation of product quality information, which can lead to low reliability, usability, and recognition efficiency. Based on the structural principle of star sensors, this paper employed threshold denoising for star images. It constructed a product quality feature model using the grayscale distribution characteristics of multiple denoised star maps. Combined with the principle of optical aberration imaging, this model established a product quality classification model to satisfy the intelligent classification requirements for product assembly quality, interpreting product quality information as more reliable, operable, and usable, effectively reducing production costs and time.
练鹏, 杨积东, 叶宋杭, 占晓敏. 一种基于星图灰度分布特征的星敏感器质量分类方法[J]. 空天防御, 2025, 8(2): 118-124.
LIAN Peng, YANG Jidong, YE Songhang, ZHAN Xiaomin. A Quality Classification Method for Star Sensor Based on Gray-Scale Distribution Characteristics of Star Maps. Air & Space Defense, 2025, 8(2): 118-124.