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Research on The Optimal Selection Method of Image Complexity Assessment Model Index Parameter

机译:图像复杂度评估模型指标参数的最优选择方法研究

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摘要

Target recognition is widely used in national economy, space technology and national defense and other fields. There is great difference between the difficulty of the target recognition and target extraction. The image complexity is evaluating the difficulty level of extracting the target from background. It can be used as a prior evaluation index of the target recognition algorithm's effectiveness. The paper, from the perspective of the target and background characteristics measurement, describe image complexity metrics parameters using quantitative, accurate mathematical relationship. For the collinear problems between each measurement parameters, image complexity metrics parameters are clustered with gray correlation method. It can realize the metrics parameters of extraction and selection, improve the reliability and validity of image complexity description and representation, and optimize the image the complexity assessment calculation model. Experiment results demonstrate that when gray system theory is applied to the image complexity analysis, target characteristics image complexity can be measured more accurately and effectively.
机译:目标识别广泛应用于国民经济,航天技术和国防等领域。目标识别和目标提取的难度之间存在很大差异。图像复杂度正在评估从背景中提取目标的难度级别。它可以用作目标识别算法有效性的预先评估指标。本文从目标和背景特征测量的角度,使用定量,准确的数学关系描述了图像复杂性指标参数。对于每个测量参数之间的共线问题,将图像复杂度指标参数通过灰色关联法进行聚类。它可以实现提取和选择的度量参数,提高图像复杂度描述和表示的可靠性和有效性,并优化图像复杂度评估计算模型。实验结果表明,将灰色系统理论应用于图像复杂度分析,可以更准确,有效地测量目标特征图像的复杂度。

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