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Optimization of facade segmentation based on layout priors

机译:基于布局先验的立面分割优化

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摘要

We propose an algorithm that provides a pixel-wise classification of building facades. Building facades provide a rich environment for testing semantic segmentation techniques. They come in a variety of styles affecting appearance and layout. On the other hand, they exhibit a degree of stability in the arrangement of structures across different instances. Furthermore, a single image is often composed of a repetitive architectural pattern. We integrate appearance, layout and repetition cues in a single energy function, that is optimized through the TRW-S algorithm to provide a classification of superpixels. The appearance energy is based on scores of a Random Forrest classifier. The feature space is composed of higher-level vectors encoding distance to structure clusters. Layout priors are obtained from locations and structural adjacencies in training data. In addition, priors result from translational symmetry cues acquired from the scene itself through clustering via the α -expansion graphcut algorithm. We are on par with state-of-the-art. We are able to fine tune classifications at the superpixel level, while most methods model all architectural features with bounding rectangles.
机译:我们提出了一种算法,该算法提供了建筑立面的像素分类。建筑立面为测试语义分割技术提供了丰富的环境。它们具有影响外观和布局的多种样式。另一方面,它们在跨不同实例的结构排列中表现出一定程度的稳定性。此外,单个图像通常由重复的建筑图案组成。我们将外观,布局和重复提示集成在单个能量函数中,该函数通过TRW-S算法进行了优化,以提供超像素的分类。外观能量基于随机福雷斯特分类器的分数。特征空间由编码到结构簇的距离的高级向量组成。布局先验是从训练数据中的位置和结构邻接获得的。另外,先验是由通过α-展开graphcut算法通过聚类从场景本身获取的平移对称提示产生的。我们与最新技术保持一致。我们能够在超像素级别微调分类,而大多数方法都使用边界矩形为所有建筑特征建模。

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