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A multi-feature fusion moving target recognition method based on believability regression reasoning

机译:基于可信度回归推理的多特征融合运动目标识别方法

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Features of dynamic target under the complex natural background change drastically, and methods based on single feature recognition could not adapt to the drastic changes, while the method based on multi-feature fusion recognition is one of the important research directions. However, the target distance, scale and background environment vary widely in the process of dynamic target tracking; the basic reliability of multifeature classifiers based on fusion reasoning is unpredictable. This paper proposes a multi-feature fusion recognition algorithm for dynamic target based on reliability regression reasoning. To begin with, target multi-dimensional independent features were extracted; what's more, the basic probability distribution of D-S reasoning based on SVM classifiers was designed according to the mixed matrix distance measure and SVM recognition rate of each feature classifier; furthermore, the relationship between the basic probability distribution and target distance, founded by least square fitting and reliability regression model of D-S reasoning, was acquired. Finally, the method based on multifeature fusion recognition for moving target was fulfilled under the condition of target distance continuous variation at complex environment. Comparative experiments showed that the algorithm has good generalization ability as well as higher efficiency, and the uncertainty of target recognition in the process of dynamic target tracking was reduced to a large extent.
机译:在复杂的自然背景下,动态目标的特征发生了急剧变化,基于单特征识别的方法无法适应急剧变化,而基于多特征融合识别的方法是重要的研究方向之一。但是,在动态目标跟踪过程中,目标距离,尺度和背景环境差异很大。基于融合推理的多特征分类器的基本可靠性是不可预测的。提出了一种基于可靠性回归推理的动态目标多特征融合识别算法。首先,提取目标多维独立特征。此外,根据每个特征分类器的混合矩阵距离度量和支持向量机识别率,设计了基于支持向量机分类器的D-S推理基本概率分布。此外,获得了由最小二乘拟合和D-S推理的可靠性回归模型建立的基本概率分布与目标距离之间的关系。最后,在复杂环境下目标距离连续变化的条件下,实现了基于多特征融合识别的运动目标方法。对比实验表明,该算法具有良好的泛化能力和较高的效率,大大降低了动态目标跟踪过程中目标识别的不确定性。

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