Cross-Modal Learning of Housing Quality in Amsterdam

A. Levering, Diego Marcos, Ilan Havinga, D. Tuia
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引用次数: 1

Abstract

In our research we test data and models for the recognition of housing quality in the city of Amsterdam from ground-level and aerial imagery. For ground-level images we compare Google StreetView (GSV) to Flickr images. Our results show that GSV predicts the most accurate building quality scores, approximately 30% better than using only aerial images. However, we find that through careful filtering and by using the right pre-trained model, Flickr image features combined with aerial image features are able to halve the performance gap to GSV features from 30% to 15%. Our results indicate that there are viable alternatives to GSV for liveability factor prediction, which is encouraging as GSV images are more difficult to acquire and not always available.
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阿姆斯特丹住房质量的跨模式学习
在我们的研究中,我们从地面和航空图像中测试了识别阿姆斯特丹市住房质量的数据和模型。对于地面图像,我们将Google StreetView (GSV)与Flickr图像进行比较。我们的研究结果表明,GSV预测最准确的建筑质量分数,大约比仅使用航空图像好30%。然而,我们发现,通过仔细过滤和使用正确的预训练模型,Flickr图像特征结合航空图像特征能够将与GSV特征的性能差距从30%减少到15%。我们的研究结果表明,有可行的替代GSV来预测宜居系数,这是令人鼓舞的,因为GSV图像更难获取,而且并不总是可用的。
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