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Semantic Classification in Aerial Imagery by Integrating Appearance and Height Information

机译:融合外观和高度信息的航空影像语义分类

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In this paper we present an efficient technique to obtain accurate semantic classification on the pixel level capable of integrating various modalities, such as color, edge responses, and height information. We propose a novel feature representation based on Sigma Points computations that enables a simple application of powerful covariance descriptors to a multi-class randomized forest framework. Additionally, we include semantic contextual knowledge using a conditional random field formulation. In order to achieve a fair comparison to state-of-the-art methods our approach is first evaluated on the MSRC image collection and is then demonstrated on three challenging aerial image datasets Dallas, Graz, and San Francisco. We obtain a full semantic classification on single aerial images within two minutes. Moreover, the computation time on large scale imagery including hundreds of images is investigated.
机译:在本文中,我们提出了一种有效的技术,可以在像素级别获得准确的语义分类,该算法能够集成各种模式,例如颜色,边缘响应和高度信息。我们提出了一种基于Sigma Points计算的新颖特征表示,该函数表示可以将强大的协方差描述符简单地应用到多类随机森林框架中。此外,我们使用条件随机字段公式包括语义上下文知识。为了与最新方法进行公平比较,我们首先对MSRC图像集进行了评估,然后在达拉斯,格拉茨和旧金山这三个具有挑战性的航空图像数据集上进行了论证。我们在两分钟内对单个航拍图像获得了完整的语义分类。此外,研究了在包含数百幅图像的大规模图像上的计算时间。

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