首页> 外文会议>Advances in Knowledge Discovery and Data Mining; Lecture Notes in Artificial Intelligence; 4426 >Semantic Feature Selection for Object Discovery in High-Resolution Remote Sensing Imagery
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Semantic Feature Selection for Object Discovery in High-Resolution Remote Sensing Imagery

机译:高分辨率遥感影像中目标发现的语义特征选择

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摘要

Given its importance, the problem of object discovery in High-Resolution Remote-Sensing (HRRS) imagery has been given a lot of attention by image retrieval researchers. Despite the vast amount of expert endeavor spent on this problem, more effort has been expected to discover and utilize hidden semantics of images for image retrieval. To this end, in this paper, we exploit a hyperclique pattern discovery method to find complex objects that consist of several co-existing individual objects that usually form a unique semantic concept. We consider the identified groups of co-existing objects as new feature sets and feed them into the learning model for better performance of image retrieval. Experiments with real-world datasets show that, with new semantic features as starting points, we can improve the performance of object discovery in terms of various external criteria.
机译:鉴于其重要性,高分辨率图像遥感器(HRRS)图像中的对象发现问题已引起图像检索研究人员的广泛关注。尽管在此问题上花费了大量的专家精力,但是人们期望人们付出更多的努力来发现和利用图像的隐藏语义来进行图像检索。为此,在本文中,我们利用超陈旧模式发现方法来查找复杂对象,该对象由通常共同形成独特语义概念的几个并存的单个对象组成。我们将已识别的共存对象组视为新功能集,并将其输入到学习模型中,以实现更好的图像检索性能。真实数据集的实验表明,以新的语义特征为起点,我们可以根据各种外部条件来提高对象发现的性能。

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