Redirigiendo al acceso original de articulo en 21 segundos...
Inicio  /  Aerospace  /  Vol: 10 Par: 3 (2023)  /  Artículo
ARTÍCULO
TITULO

An Effective Procedure to Build Space Object Datasets Based on STK

Rongke Wei    
Anyang Song    
Huixian Duan and Haodong Pei    

Resumen

With the development of space technology, deep learning methods, with their excellent generalization ability, are increasingly applied in various space activities. The space object data is difficult to obtain, which greatly limits its application in space activities. The images of the existing public spacecraft dataset are mostly rendered, which not only lack physical meaning but also have limited data. In this paper, we propose an effective construction procedure to build a space object dataset based on STK, which can help to break the limitations of deep learning methods in space activities. Firstly, based on STK, we conduct orbit simulation for 24 space targets and establish the simulation dataset; secondly, we use 600 images of 6 typical targets and label them to build a real-shot validation dataset. Finally, the constructed space object dataset based on STK is verified to be effective through six semantic segmentation networks, which can be used to train the real spacecraft?s semantic segmentation. Lots of experiments show that the accuracy of migrating the training results of the simulation dataset to the real shooting dataset is slightly reduced, but the mPA is still greater than 85%. In particular, after adding orbital physics simulation data, the accuracy of six semantic segmentation methods is generally improved. Therefore, the STK-based physical simulation of orbit is an effective method for space object dataset construction.

 Artículos similares

       
 
Carlo Santini, Fabio Mangini and Fabrizio Frezza    
The purpose of a circle packing procedure is to fill up a predefined, geometrical, closed contour with a maximum finite number of circles. The subject has received considerable attention in pure and applied sciences and has proved to be highly effective ... ver más
Revista: Algorithms

 
Li-Na Wang, Hongxu Wei, Yuchen Zheng, Junyu Dong and Guoqiang Zhong    
Ensemble learning, online learning and deep learning are very effective and versatile in a wide spectrum of problem domains, such as feature extraction, multi-class classification and retrieval. In this paper, combining the ideas of ensemble learning, on... ver más
Revista: Algorithms

 
Domenico Pascarella, Gabriella Gigante, Angela Vozella, Maurizio Sodano, Marco Ippolito, Pierre Bieber, Thomas Dubot and Edgar Martinavarro    
The drone market?s growth poses a serious threat to the negligent, illicit, or non-cooperative use of drones, especially in airports and their surroundings. Effective protection of an airport against drone intrusions should guarantee mandatory safety lev... ver más
Revista: Information

 
Antonio Carlo Bertolino, Matteo Gaidano, Stefano Smorto, Paolo Giovanni Porro and Massimo Sorli    
Vibrations generated by the main rotor-gearbox assembly in a helicopter are the principal cause of damage to cockpit instruments and crew discomfort in terms of cabin noise. The principal path of vibration transmission to the fuselage is through the gear... ver más
Revista: Aerospace

 
Jinnan Wang, Weiqin Tong and Xiaoli Zhi    
Convolutional neural networks (CNNs) have made impressive achievements in image classification and object detection. For hardware with limited resources, it is not easy to achieve CNN inference with a large number of parameters without external storage. ... ver más
Revista: Algorithms