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Nonparametric scene parsing in the images of buildings

机译:在建筑物的图像中解析非参数场景

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In this paper, we present a nonparame tric approach to parse an image into regions of building, door, ground, sky, and other possible objects (such as cars, people, and trees). In a nonparametric method, first, similar images to that of the test are retrieved from a labeled training dataset. Then, the labels are transferred from the superpixels of the retrieved images to their corresponding superpixels of the test image. Finally, the conceptual Markov random field model is utilized to increase the superpixel labeling accuracy. In addition, we propose a method to improve door detection accuracy using the line, color, texture, and contextual cues. We have collected 3093 images of 40 different types of buildings from the LabelMe and Sun datasets, consisting of skyscrapers, shops, houses, apartments, churches, and so on. Experimental results on the dataset show the effectiveness of our approach with promising results. (C) 2018 Elsevier Ltd. All rights reserved.
机译:在本文中,我们提出了一个非酸族的TRIC方法,将图像解析为建筑物,门,地,天空和其他可能的物体(如汽车,人和树)的区域。 在非参数方法中,首先,从标记的训练数据集中检索与测试的类似图像。 然后,将标签从检索到的图像的超像素转移到它们的测试图像的相应超像素。 最后,利用概念性马尔可夫随机场模型来增加超像素标记精度。 此外,我们提出了一种使用线,颜色,纹理和上下文提示提高门检测精度的方法。 我们收集了来自Labelme和Sun Datasets的40种不同类型建筑物的3093张图片,包括摩天大楼,商店,房屋,公寓,教堂等。 数据集上的实验结果显示了我们具有有前途的结果的方法。 (c)2018年elestvier有限公司保留所有权利。

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