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Multiple view semantic segmentation for street view images

机译:街景图像的多视图语义分割

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We propose a simple but powerful multi-view semantic segmentation framework for images captured by a camera mounted on a car driving along streets. In our approach, a pair-wise Markov Random Field (MRF) is laid out across multiple views. Both 2D and 3D features are extracted at a super-pixel level to train classifiers for the unary data terms of MRF. For smoothness terms, our approach makes use of color differences in the same image to identify accurate segmentation boundaries, and dense pixel-to-pixel correspondences to enforce consistency across different views. To speed up training and to improve the recognition quality, our approach adaptively selects the most similar training data for each scene from the label pool. Furthermore, we also propose a powerful approach within the same framework to enable large-scale labeling in both the 3D space and 2D images. We demonstrate our approach on more than 10,000 images from Google Maps Street View.
机译:我们为安装在沿着街道行驶的汽车上的摄像头捕获的图像提出了一个简单但功能强大的多视图语义分割框架。在我们的方法中,跨多个视图布置成对的马尔可夫随机场(MRF)。在超像素级别提取2D和3D特征,以训练MRF一元数据项的分类器。对于平滑度而言,我们的方法利用同一图像中的色差来识别准确的分割边界,并使用密集的像素间对应关系来增强不同视图之间的一致性。为了加快训练速度并提高识别质量,我们的方法从标签库中为每个场景自适应地选择了最相似的训练数据。此外,我们还在同一框架内提出了一种强大的方法,可以在3D空间和2D图像中进行大规模标记。我们在来自Google Maps Street View的10,000幅图像中展示了我们的方法。

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