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Semantic segmentation of objects from airborne imagery

机译:航空影像中对象的语义分割

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Extraction of objects from images acquired by airborne sensors is the one of the most important topics in Aerial Photograph Interpretation (API). The task is challenging due to the very heterogeneous appearance of man-made and natural objects on the ground. Meanwhile images acquired by airborne sensors are very high-resolution, which requires high computational costs. This paper presents an efficient approach for automated extraction of objects at pixel level. We propose to combine a powerful classifier and an efficient contextual model for semantic segmentation of objects in images. Multiple image features are used to train the classifier, other features are used to learn the contextual model. We employ Random forest (RF) as classifier which allows one to learn very fast on big data. The outputs given by RF are then combined with a fully connected conditional random field (CRF) model for improving classification performance. Experiments have been conducted on a challenging aerial image dataset from a recent ISPRS Semantic Labeling Contest. We obtained state-of-the-art performance with a reasonable computational demand.
机译:从机载传感器获取的图像中提取对象是航空摄影解释(API)中最重要的主题之一。由于人造和天然物体在地面上的外观非常不同,因此这项任务具有挑战性。同时,机载传感器获取的图像具有很高的分辨率,这需要很高的计算成本。本文提出了一种在像素级别自动提取对象的有效方法。我们建议结合强大的分类器和有效的上下文模型对图像中的对象进行语义分割。多个图像特征用于训练分类器,其他特征用于学习上下文模型。我们采用随机森林(RF)作为分类器,它使人们可以快速学习大数据。然后,将RF给出的输出与完全连接的条件随机场(CRF)模型组合起来,以提高分类性能。最近的ISPRS语义标签竞赛已对具有挑战性的航空影像数据集进行了实验。我们以合理的计算需求获得了最先进的性能。

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