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首页> 外文期刊>Journal of Applied Remote Sensing >Saliency-constrained semantic learning for airport target recognition of aerial images
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Saliency-constrained semantic learning for airport target recognition of aerial images

机译:显着性语义学习用于航空图像的机场目标识别

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摘要

The airport target recognition method for remote sensing images is generally based on image matching, which is significantly affected by the variations of illumination, viewpoints, scale, and so on. As a well-known semantic model for target recognition, bag-of-features (BoF) performs k-means clustering on enormous local feature descriptors and thus generates the visual words to represent the images. We propose a fast automatic recognition framework for an airport target of a low-resolution remote sensing image under a complicated environment. It can be viewed as a two-phase procedure: detection and then classification. Concretely, it first utilizes a visual attention model for locating the salient region, and then detects possible candidate targets and extracts saliency-constrained scale invariant feature transform descriptors to build a high-level semantics model. Consequently, BoF is applied to mine the high-level semantics of targets. Different from k-means in a traditional BoF, we employ locality preserving indexing (LPI) to obtain the visual words. Because LPI can consider the intrinsic local structure of descriptors and further enhance the ability of words to describe the image content, it can accurately classify the detected candidate targets. Experiments on the dataset of 10 kinds of airport aerial images demonstrate the feasibility and effectiveness of the proposed method. (C) 2015 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:用于遥感图像的机场目标识别方法通常基于图像匹配,这受照明,视点,比例等变化的影响很大。作为用于目标识别的众所周知的语义模型,特征包(BoF)在巨大的局部特征描述符上执行k-means聚类,从而生成可视词来表示图像。针对复杂环境下低分辨率遥感影像的机场目标,我们提出了一种快速的自动识别框架。可以将其视为两个阶段的过程:检测然后分类。具体而言,它首先利用视觉注意模型来定位显着区域,然后检测可能的候选目标,并提取显着性约束的尺度不变特征变换描述符,以建立高级语义模型。因此,BoF被用于挖掘目标的高级语义。与传统BoF中的k均值不同,我们采用局部性保留索引(LPI)来获取视觉单词。由于LPI可以考虑描述符的固有局部结构,并进一步增强单词描述图像内容的能力,因此它可以准确地对检测到的候选目标进行分类。通过对10种机场航拍图像数据集的实验证明了该方法的可行性和有效性。 (C)2015年光电仪器工程师协会(SPIE)

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