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Cross-Year Multi-Modal Image Retrieval Using Siamese Networks

机译:使用连体网络的跨年度多模态图像检索

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This paper introduces a multi-modal network that learns to retrieve by content vertical aerial images of French urban and rural territories taken about 15 years apart. This means it should be invariant against a big range of changes as the (natural) landscape evolves over time. It leverages the original images and semantically segmented and labeled regions. The core of the method is a Siamese network that learns to extract features from corresponding image pairs across time. These descriptors are discriminative enough, such that a simple kNN classifier on top, suffices as final geo-matching criteria. The method outperformed SOTA “off-the-shelf’ image descriptors GEM and ResNet50 on the new aerial images dataset.
机译:本文介绍了一种多模式网络,该网络可通过内容学习检索相距约15年的法国城市和农村地区的垂直航拍图像。这意味着随着(自然)景观随着时间的推移而发生变化,它应该不受大范围变化的影响。它利用原始图像以及语义上被分割和标记的区域。该方法的核心是一个暹罗网络,该网络学习跨时间从对应的图像对中提取特征。这些描述符具有足够的区分性,因此最简单的kNN分类器足以满足最终的地理匹配条件。该方法在新的航空图像数据集上的表现优于SOTA“现成的”图像描述符GEM和ResNet50。

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