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Inter/intra-category discriminative features for aerial image classification: A quality-aware selection model

机译:用于空中图像分类的间/类别类别辨别特征:一种质量感知的选择模型

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摘要

Classification, recognition, and quality assessment of aerial images strongly depends on detecting and identifying their discriminative visual features. In practice, aerial images provide clues for various applications, including disaster prediction, automatic navigation, and military target detection. However, the detection of discriminative cues in aerial images is quite problematic since the aerial image quality is susceptible to luminance and noise, while aerial images have significantly different topological structures. We propose a novel method to explore quality-related and topological cues from aerial images for visual classification to mitigate these problems. We first decompose aerial images into several components, each being processed via the morphological filtering. Subsequently, we leverage the quality model to generate discriminative regions and topologies. Each aerial image is represented using a feature vector extracted from these regions. Afterward, we train a CNN-based visual classification model to predict aerial image categories. Experimental results have shown that our method can effectively predict aerial image categories, and the proposed algorithm is more robust than other state-of-the-art ones.
机译:对航空图像的分类,识别和质量评估强烈取决于检测和识别其辨别性视觉特征。在实践中,空中图像提供各种应用的线索,包括灾害预测,自动导航和军事目标检测。然而,由于航空图像质量易受亮度和噪声的影响,因此在空中图像质量易感,而空中图像具有显着不同的拓扑结构,因此在空中图像中的判别线索的检测是非常有问题的。我们提出了一种新颖的方法,探讨来自航空图像的质量相关和拓扑线索以进行视觉分类以减轻这些问题。我们首先将空中图像分解为几个部件,每个部件通过形态过滤处理。随后,我们利用质量模型产生判别区域和拓扑。每个空中图像使用从这些区域提取的特征向量表示。之后,我们训练基于CNN的视觉分类模型来预测航空图像类别。实验结果表明,我们的方法可以有效地预测航空图像类别,并且所提出的算法比其他最先进的算法更鲁棒。

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