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Probabilistic Global Scale Estimation for MonoSLAM Based on Generic Object Detection

机译:基于通用目标检测的MonoSLAM概率全局规模估计

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This paper proposes a novel method to estimate the global scale of a 3D reconstructed model within a Kalman filtering-based monocular SLAM algorithm. Our Bayesian framework integrates height priors over the detected objects belonging to a set of broad predefined classes, based on recent advances in fast generic object detection. Each observation is produced on single frames, so that we do not need a data association process along video frames. This is because we associate the height priors with the image region sizes at image places where map features projections fall within the object detection regions. We present very promising results of this approach obtained on several experiments with different object classes.
机译:本文提出了一种新的方法来估计基于Kalman滤波的单眼SLAM算法中3D重建模型的全局规模。我们的贝叶斯框架基于快速通用对象检测的最新进展,将高度优先级集成到属于一组广泛的预定义类的检测对象上。每个观察都是在单个帧上产生的,因此我们不需要沿视频帧的数据关联过程。这是因为我们将先验高度与地图特征投影落在对象检测区域内的图像位置处的图像区域大小相关联。我们提出了这种方法的非常有希望的结果,该方法是在具有不同对象类别的几次实验中获得的。

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