Visualization of radiation intensity sequences for space infrared target recognition

Shen Zhang, Xin Chen, P. Rao, Hao Zhang
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Abstract

Infrared target recognition is an important task in space-situational awareness. In the space target detection process, due to the small energy of the point target, it is easy to make the target disappear from the detection field of view under the interference of dense noise, resulting in a decline in recognition system performance. Reasonable representation of the infrared characteristics of a target is an effective means of improving the stability of recognition systems. In this study, a one-dimensional radiation intensity sequence was mapped to a two-dimensional space based on the Gramian angle field, Markov transition field, and recurrence plots to visualize the structural mode of the target radiation intensity sequence and the dynamic properties of the system generating the sequence. On this basis, a recognition framework based on convolutional neural networks was proposed to train and recognize three types of visualized signals and raw data. The experimental results showed that the proposed recognition method based on visualized signals can effectively identify the target and is robust against noise interference and missing data.
面向空间红外目标识别的辐射强度序列可视化
红外目标识别是空间态势感知中的一项重要任务。在空间目标检测过程中,由于点目标能量较小,在密集噪声的干扰下,容易使目标从检测视场中消失,导致识别系统性能下降。合理表征目标的红外特征是提高识别系统稳定性的有效手段。本研究基于Gramian角场、Markov过渡场和递归图,将一维辐射强度序列映射到二维空间,可视化目标辐射强度序列的结构模式和产生该序列的系统的动态特性。在此基础上,提出了一种基于卷积神经网络的识别框架,对三种可视化信号和原始数据进行训练和识别。实验结果表明,所提出的基于可视化信号的目标识别方法能够有效地识别目标,并且对噪声干扰和数据缺失具有较强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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