非参数道路场景分析的空间先验

Shuai Di, Honggang Zhang, Xue Mei, D. Prokhorov, Haibin Ling
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引用次数: 4

摘要

分析车载摄像头拍摄的道路场景图像为自动道路车辆的高级任务提供了重要信息。本文采用非参数框架来解决这一问题,并提出了一种简单而有效的将空间先验整合到框架中的策略。与自然场景图像不同,我们问题中的道路场景图像通常具有非常稳定的场景布局,这促使我们对这种布局进行探索,以改进场景标注。特别是,每个语义类别的空间分布是从一组先前观察到的数据中获得的。然后,以直方图的形式将这些分布整合到非参数标记框架中,以指导场景解析。与以前的方法相比,我们的解决方案在计算和内存使用方面都非常高效,因为不涉及复杂的语义训练。为了进行评估,我们收集了三个不同行程的三个视频数据集,并在所有这些数据集上运行了所提出的算法,无论是在每个行程内还是跨行程。实验结果表明了该算法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial Prior for Nonparametric Road Scene Parsing
Parsing road scene images taken from vehicle mounted cameras provides important information for high level tasks in automated on-road vehicles. In this paper we adopt the nonparametric framework for this problem and present a simple yet effective strategy to integrate spatial prior into the framework. Unlike natural scene images, road scene images in our problem typically have very stable scene layout, which motivates us to explore such layout for improving scene labeling. In particular, the spatial distribution of each semantic category is obtained from a set of previously observed data. Then, such distributions, in the form of histograms, are integrated into the nonparametric labeling framework to guide scene parsing. Compared with previous approaches, our solution is very efficient in both computation and memory usage, since there is no complicated semantic training involved. For evaluation, we collected three video datasets on three different trips and ran the proposed algorithm on all of them, both within each trip or cross trip. The experimental results show advantages of our algorithm.
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