论文标题
城市村庄检测的城市区域图上的上下文主奴隶框架
A Contextual Master-Slave Framework on Urban Region Graph for Urban Village Detection
论文作者
论文摘要
城市村庄(UVS)是指落后于城市快速城市化的欠发达的非正式定居点。由于这些紫外线中存在很高的社会不平等和社会风险,因此对于城市经理来说,发现所有紫外线以制定适当的翻新政策至关重要。现有的检测紫外线的方法是劳动密集型的,或者还没有完全解决紫外线检测中的独特挑战,例如标签紫外线的稀缺性和不同地区的多种城市模式。为此,我们首先建立一个城市地区图(URG),以层次结构化的方式对城市地区进行建模。然后,我们设计了一个新颖的上下文主奴隶框架,以有效地从URG检测城市村庄。这种框架的核心思想是首先在URG上预先训练A(或主)模型,然后从不同区域的基本模型中适应特定的(或从属)模型。拟议的框架可以学会平衡市区紫外线检测的一般性和特异性。最后,我们在三个城市进行了广泛的实验,以证明我们的方法的有效性。
Urban villages (UVs) refer to the underdeveloped informal settlement falling behind the rapid urbanization in a city. Since there are high levels of social inequality and social risks in these UVs, it is critical for city managers to discover all UVs for making appropriate renovation policies. Existing approaches to detecting UVs are labor-intensive or have not fully addressed the unique challenges in UV detection such as the scarcity of labeled UVs and the diverse urban patterns in different regions. To this end, we first build an urban region graph (URG) to model the urban area in a hierarchically structured way. Then, we design a novel contextual master-slave framework to effectively detect the urban village from the URG. The core idea of such a framework is to firstly pre-train a basis (or master) model over the URG, and then to adaptively derive specific (or slave) models from the basis model for different regions. The proposed framework can learn to balance the generality and specificity for UV detection in an urban area. Finally, we conduct extensive experiments in three cities to demonstrate the effectiveness of our approach.