首页> 外文期刊>Arabian Journal for Science and Engineering. Section A, Sciences >Infrared Image Complexity Metric for Automatic Target Recognition Based on Neural Network and Traditional Approach Fusion
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Infrared Image Complexity Metric for Automatic Target Recognition Based on Neural Network and Traditional Approach Fusion

机译:基于神经网络和传统方法融合的红外图像复杂度自动识别指标

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摘要

Infrared image complexity metric plays an important role in automatic target recognition (ATR) performance evaluation.In particular, with the development of the infrared imaging technology, there are many excellent infrared image complexitymetrics for ATR. However, in the related works, there are two aspects of imperfections: (1) only the influence of individualfeature is considered, ignoring the interaction among characteristics; and (2) these metrics all do not take the degradationof thermal imaging process into account. To overcome the imperfections, a novel criterion of evaluating infrared imagecomplexity which considers the interaction among characteristics and the degradation influence is proposed. Firstly, toachieve complementary advantages among characteristics, the feature space is introduced to establish three image complexityindicators, respectively, namely feature space degradation complexity (FSDC), feature space similarity degree of globalbackground and feature space occultation degree of local background. Each indicator is integrated by feature space to obtaincomplementary advantages. Secondly, to take the degradation of thermal imaging process into account, the neural networkis trained to obtain the FSDC. In addition, the feature spaces are perfected by Pearson’s correlation analysis and relevantfeatures were removed so that each indicator is more reasonable. Finally, we connect the three image complexity indicatorsby using an improved analytic hierarchy process. The experimental results show that the proposed algorithm is more consistentwith the actual situation than traditional statistical variance and signal-to-noise ratio.
机译:红外图像复杂度度量在自动目标识别(ATR)性能评估中起着重要作用,特别是随着红外成像技术的发展,ATR有许多出色的红外图像复杂度度量。但是,在相关的作品中,不完美之处有两个方面:(1)只考虑个人特征的影响,而忽略了特征之间的相互作用。 (2)这些指标都没有考虑热成像过程的恶化。为了克服这些缺陷,提出了一种新的评估红外图像复杂度的标准,该标准考虑了特性之间的相互作用以及降级影响。首先,为了获得各特征之间的互补优势,引入特征空间来建立三个图像复杂度指标,分别为特征空间退化复杂度(FSDC),全局背景的特征空间相似度和局部背景的遮挡度。每个指标都按特征空间进行集成以获得互补优势。其次,考虑到热成像过程的退化,训练了神经网络以获得FSDC。此外,通过皮尔逊(Pearson)的相关性分析完善了特征空间,并删除了相关特征,从而使每个指标更加合理。最后,我们使用改进的层次分析法将三个图像复杂度指标联系起来。实验结果表明,与传统的统计方差和信噪比相比,该算法与实际情况更加吻合。

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