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Multiple Region Categorization for Scenery Images

机译:风景图像的多区域分类

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摘要

We present two novel contributions to the problem of region classification in scenery/landscape images. The first is a model that incorporates local cues with global layout cues, following the statistical characteristics recently suggested in [1]. The observation that background regions in scenery images tend to horizontally span the image allows us to represent the contextual dependencies between background region labels with a simple graphical model, on which exact inference is possible. While background is traditionally classified using only local color and textural features, we show that using new layout cues significantly improves background region classification. Our second contribution addresses the problem of correct results being considered as errors in cases where the ground truth provides the structural class of a land region (e.g., mountain), while the classifier provides its coverage class (e.g., grass), or vice versa. We suggest an alternative labeling method that, while trained using ground truth that describes each region with one label, assigns both a structural and a coverage label for each land region in the validation set. By suggesting multiple labels, each describing a different aspect of the region, the method provides more information than that available in the ground truth.
机译:我们提出了两个新颖的贡献,对风景/风景图像中的区域分类问题。第一个模型是根据最近[1]中建议的统计特征,将局部提示与全局布局提示结合在一起的模型。风景图像中的背景区域趋向于水平跨过图像的观察使我们可以使用简单的图形模型来表示背景区域标签之间的上下文相关性,在该模型上可以进行准确的推断。传统上仅使用局部颜色和纹理特征对背景进行分类,但我们显示,使用新的布局提示可以显着改善背景区域分类。我们的第二个贡献解决了在地面实况提供陆地区域(例如山区)的结构类别而分类器提供其覆盖范围类别(例如草)或相反的情况下,将正确结果视为错误的问题。我们建议一种替代的标记方法,该方法使用地面实况训练,用一个标签描述每个区域,同时为验证集中的每个陆地区域分配结构和覆盖标签。通过建议多个标签,每个标签都描述了该地区的不同方面,该方法提供了比地面真实情况中可用信息更多的信息。

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