Space target classification method based on multi-layer adversarial network

A space target and classification method technology, applied in the field of spacecraft navigation, to achieve the effects of identity suppression, strong robustness, and improved autonomous operation capabilities

Pending Publication Date: 2020-05-19
SHANGHAI AEROSPACE CONTROL TECH INST
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AI Technical Summary

Problems solved by technology

This system aims to solve the classification problem of various types of targets and relative motion in the images acquired by imaging loads under complex conditions. Based on the adversarial network, reliable feature extraction can be achieved through games, and a method for the brightness, identity, and individuality of targets is proposed. Features, etc. have strong robustness, are widely applicable to the space environment, and can realize accurate classification methods for various complex targets, enabling spacecraft to achieve effective classification of payload observation images, and carry out targeted applications to effectively improve the active spacecraft. The autonomous operation capability in orbit provides an important guarantee for the autonomous navigation and safe survival of spacecraft

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  • Space target classification method based on multi-layer adversarial network
  • Space target classification method based on multi-layer adversarial network
  • Space target classification method based on multi-layer adversarial network

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Embodiment Construction

[0033] The present invention will be further described below through specific embodiments in conjunction with the accompanying drawings. These embodiments are only used to illustrate the present invention, and are not intended to limit the protection scope of the present invention.

[0034] The active spacecraft is a spacecraft in a natural orbiting mode; the imaging payload is an inertial pointing-stabilized detector mounted on the active spacecraft, which is used to photograph non-ground targets. There are various types of targets in the images acquired by the imaging payload of the active spacecraft in a complex state. The complex state is the complex relative motion between the active spacecraft and the imaging target, the illumination adjustment of the imaging environment, and no prior information and type of the imaging target.

[0035] The present invention is a kind of spatial object classification method based on multi-layer confrontation network, such as figure 1 sh...

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Abstract

The invention discloses a space target classification method based on a multilayer adversarial network, and the method comprises the following steps: 1, carrying out the sequential multi-frame projection of an imaging target through an imaging load, and obtaining a space image; 2, performing feature augmentation on the space image to obtain an augmented space image; 3, based on the top-layer adversarial network, performing foreground extraction on the augmented space image, and extracting foreground information; and step 4, based on conditional convolution adversarial training, performing progressive two-stage adversarial on the foreground information, extracting a general representation vector, and finishing space target classification. According to the invention, the classification problems that various types of targets exist in an imaging load acquisition image under a complex state and relative motion exists can be solved; reliable feature extraction can be achieved through gamingbased on the adversarial network, accurate classification of various complex targets is achieved, targeted application is developed, the on-orbit autonomous operation capacity of the active spacecraftis effectively improved, and important guarantee is provided for autonomous navigation and safe survival of the spacecraft.

Description

technical field [0001] The invention relates to the technical field of spacecraft navigation, in particular to a space target classification method based on a multi-layer confrontation network. Background technique [0002] With the development of space technology in various countries, the requirements for autonomy and functionality of space equipment are gradually increasing. On the one hand, for the autonomy of spacecraft, fully autonomous orbit determination is the most basic ability to survive and operate. In the process of orbit determination, images of celestial bodies such as stars and planets are important information sources. On the other hand, for the functionality of a spacecraft, whether it is safe survival or debris removal, active detection and active identification of targets are prerequisites for safe operation and mission execution. [0003] At the same time, due to the possible relative movement of orbit and attitude between the unknown space target and th...

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Application Information

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IPC IPC(8): G06K9/62
CPCG06F18/214G06F18/241
Inventor 韩飞王兆龙孙俊贺亮陈文李木子
Owner SHANGHAI AEROSPACE CONTROL TECH INST
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