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Object Recognition Based on the Context Aware Decision-Level Fusion in Multiviews Imagery

机译:基于上下文感知决策级融合的多视图图像目标识别

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摘要

Spectral similarities and spatial adjacencies between various kinds of objects, shadow, and occluded areas behind high-rise objects as well as the complex relationships between various object types lead to the difficulties and ambiguities in object recognition in urban areas. Using a knowledge base containing the contextual information together with the multiviews imagery may improve the object recognition results in such a situation. The proposed object recognition strategy in this paper has two main stages: single view and multiviews processes. In the single view process, defining region’s properties for each of the segmented regions, the object-based image analysis (OBIA) is performed independently on the individual views. In the second stage, the classified objects of all views are fused together through a decision-level fusion based on the scene contextual information in order to refine the classification results. Sensory information, analyzing visibility maps, height, and the structural characteristics of the multiviews classified objects define the scene contextual information. Evaluation of the capabilities of the proposed context aware object recognition methodology is performed on two datasets: 1) multiangular Worldview-2 satellite images over Rio de Janeiro in Brazil and 2) multiviews digital modular camera (DMC) aerial images over a complex urban area in Germany. The obtained results represent that using the contextual information together with a decision-level fusion of multiviews, the object recognition difficulties and ambiguities are decreased and the overall accuracy and the kappa are gradually improved for both of the WorldView-2 and the DMC datasets.
机译:高层物体后面的各种物体,阴影和被遮挡区域之间的光谱相似性和空间邻接性,以及各种物体类型之间的复杂关系,导致城市区域物体识别中的困难和模糊性。在这种情况下,使用包含上下文信息和多视图图像的知识库可以改善对象识别结果。本文提出的目标识别策略具有两个主要阶段:单视图和多视图过程。在单视图过程中,为每个分割的区域定义区域的属性,基于对象的图像分析(OBIA)在各个视图上独立进行。在第二阶段,基于场景上下文信息,通过决策级融合将所有视图的分类对象融合在一起,以细化分类结果。感官信息,分析可见性图,高度和多视图分类对象的结构特征定义了场景上下文信息。对所提出的上下文感知对象识别方法的能力的评估是在两个数据集上进行的:1)巴西里约热内卢的多角度Worldview-2卫星图像和2)巴西复杂市区的多视图数字模块化相机(DMC)航空图像德国。获得的结果表明,将上下文信息与多视图的决策级融合一起使用,可以减少WorldView-2和DMC数据集的对象识别困难和歧义,并逐渐提高总体准确性和kappa。

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