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Unsupervised Classification of Street Architectures Based on InfoGAN

机译:基于Infogan的街道架构无监督分类

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Street architectures play an essential role in city image and streetscape analysing. However, existing approaches are all supervised which require costly labeled data. To solve this, we propose a street architectural unsupervised classification framework based on Information maximizing Generative Adversarial Nets (InfoGAN), in which we utilize the auxiliary distribution Q of InfoGAN as an unsupervised classifier. Experiments on database of true street view images in Nanjing, China validate the practicality and accuracy of our framework. Furthermore, we draw a series of heuristic conclusions from the intrinsic information hidden in true images. These conclusions will assist planners to know the architectural categories better.
机译:街道建筑在城市形象和街景分析中发挥重要作用。但是,现有方法都是监督,这需要昂贵标记的数据。为了解决这一点,我们提出了一种基于最大化生成的对冲网(Infogan)的信息的街道建筑无监督分类框架,其中我们利用Infogan的辅助分布Q作为无监督的分类器。南京真正的街景图像数据库实验,中国验证了我们框架的实用性和准确性。此外,我们从隐藏在真实图像中的内在信息中绘制了一系列启发式结论。这些结论将协助规划者更好地了解建筑类别。

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