Correlation-Based Facade Parsing Using Shape Grammar

Runze Zhang, Ruiling Deng, Xin He, Gang Zeng, Rui Gan, H. Zha
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引用次数: 1

Abstract

With strong inference of hierarchical and repetitive structures, semantic information has been widely used in dealing with urban scenes. In this paper, we present a super-pixel-based facade parsing framework which combines the top-down shape grammar splitting with bottom-up information aggregation: machine learning forecasts prior classes, super-pixels improve compactness, and boundary estimation divides the splitting into two procedures - raw and fine, providing a reasonable initial guess for the latter to achieve better random walk optimization results. We also put forward the correlation judging between floors for the purpose of compromising freedom degree reduction with style variety and flexibility, which is also introduced as alignment constraint term to extend the probability energy. Experiments show that our method converges fast and achieves the state-of-the-art results for different styles. Further study on understanding and reconstruction is in progress of exploiting these results.
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使用形状语法的基于关联的Facade解析
语义信息具有很强的层次性和重复性,在城市场景处理中得到了广泛的应用。在本文中,我们提出了一种基于超像素的外观解析框架,将自顶向下的形状语法分割与自底向上的信息聚合相结合:机器学习预测先验类,超像素提高紧凑性,边界估计将分割分为原始和精细两个过程,为后者提供合理的初始猜测,以获得更好的随机行走优化结果。提出了楼层间的相关性判断,以折衷降低自由度与风格的多样性和灵活性,并将其作为对齐约束项引入,以扩展概率能量。实验表明,该方法收敛速度快,对不同风格的图像都能得到较好的结果。利用这些结果,正在进行进一步的理解和重建研究。
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