城市街景背景下基于地理参考图像的城市场景分类

C. Iovan, David Picard, Nicolas Thome, M. Cord
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引用次数: 6

摘要

本文研究了城市环境街景地理参考图像的场景分类问题。更准确地说,该任务的目标是语义图像分类,包括在给定图像中预测预定义类(例如商店,植被等)的存在或不存在。该方法基于BOSSA表示,它丰富了单词袋(BoW)模型,并结合了空间金字塔匹配方案和基于核的机器学习技术。所提出的方法处理了在大规模城市环境中由于采集条件(静态和动态物体/行人)以及沿着车辆方向连续采集数据、不同的光照条件和强烈的遮挡(由于存在树木、交通标志、汽车等)而产生的高类内可变性而产生的问题。在巴黎12区的两条主要道路上收集的高分辨率图像的大型数据集上进行了实验,该方法显示了令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Urban Scenes from Geo-referenced Images in Urban Street-View Context
This paper addresses the challenging problem of scene classification in street-view georeferenced images of urban environments. More precisely, the goal of this task is semantic image classification, consisting in predicting in a given image, the presence or absence of a pre-defined class (e.g. shops, vegetation, etc.). The approach is based on the BOSSA representation, which enriches the Bag of Words (BoW) model, in conjunction with the Spatial Pyramid Matching scheme and kernel-based machine learning techniques. The proposed method handles problems that arise in large scale urban environments due to acquisition conditions (static and dynamic objects/pedestrians) combined with the continuous acquisition of data along the vehicle's direction, the varying light conditions and strong occlusions (due to the presence of trees, traffic signs, cars, etc.) giving rise to high intra-class variability. Experiments were conducted on a large dataset of high resolution images collected from two main avenues from the 12th district in Paris and the approach shows promising results.
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