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Label propagation in videos indoors with an incremental non-parametric model update

机译:使用增量非参数模型更新标记视频中的视频中的传播

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Semantic interpretation of the environment can significantly improve the capabilities of our autonomous robots. This work is focused on automatic semantic label propagation in video of indoor environments acquired by a mobile robot. Using a small number of training examples, we propose a new approach to recognize and label dominant background regions of interest, such as floor, wall and doors, and separate them from the remaining of foreground/object image categories. Our approach performs the labeling at the level of image superpixels. A simple non-parametric model is initialized from a few hand labeled examples in the first frame, and then it is propagated and updated along the sequence. We demonstrate the promising results obtained with our proposal in five different indoor sequences from different environments. The obtained semantic labeling can be used both for autonomous navigation and to provide better context for subsequent object detection.
机译:对环境的语义解释可以显着提高自治机器人的能力。这项工作专注于由移动机器人收购的室内环境的视频中的自动语义标签传播。使用少数培训示例,我们提出了一种新的方法来识别和标记占领的景点,如地板,墙壁和门,并将它们与剩余的前景/物体图像类别分开。我们的方法在图像超像素的级别执行标记。从第一帧中的少量标记示例初始化简单的非参数模型,然后沿序列传播和更新。我们展示了在不同环境中的五种不同室内序列中获得的有希望的结果。获得的语义标记可以用于自主导航,并为后续对象检测提供更好的上下文。

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