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Architectural Style Classification Using Multinomial Latent Logistic Regression

机译:基于多项式潜在Logistic回归的建筑风格分类

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Architectural style classification differs from standard classification tasks due to the rich inter-class relationships between different styles, such as re-interpretation, revival, and territoriality. In this paper, we adopt Deformable Part-based Models (DPM) to capture the morphological characteristics of basic architectural components and propose Multinomial Latent Logistic Regression (MLLR) that introduces the probabilistic analysis and tackles the multi-class problem in latent variable models. Due to the lack of publicly available datasets, we release a new large-scale architectural style dataset containing twenty-five classes. Experimentation on this dataset shows that MLLR in combination with standard global image features, obtains the best classification results. We also present interpretable probabilistic explanations for the results, such as the styles of individual buildings and a style relationship network, to illustrate inter-class relationships.
机译:建筑风格分类与标准分类任务不同,因为不同风格之间存在着丰富的类间关系,例如重新解释,复兴和地域性。在本文中,我们采用可变形的基于零件的模型(DPM)来捕获基本建筑组件的形态特征,并提出了多项式潜在对数回归(MLLR),该模型引入了概率分析并解决了潜在变量模型中的多类问题。由于缺乏公开可用的数据集,我们发布了一个包含25个类的新的大规模建筑风格数据集。在此数据集上进行的实验表明,MLLR与标准的全局图像功能相结合,可获得最佳的分类结果。我们还为结果提供了可解释的概率解释,例如单个建筑物的样式和样式关系网络,以说明类间关系。

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