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Combining Deep Learning and Model-Based Methods for Robust Real-Time Semantic Landmark Detection

机译:基于深度学习和基于模型的方法,实现鲁棒实时语义地标检测

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Compared to abstract features, significant objects, so-called landmarks, are a more natural means for vehicle localization and navigation, especially in challenging unstructured environments. The major challenge is to recognize landmarks in various lighting conditions and changing environment (growing vegetation) while only having few training samples available. We propose a new method which leverages Deep Learning as well as model-based methods to overcome the need of a large data set. Using RGB images and light detection and ranging (LiDAR) point clouds, our approach combines state-of-the-art classification results of Convolutional Neural Networks (CNN), with robust model-based methods by taking prior knowledge of previous time steps into account. Evaluations on a challenging real-wold scenario, with trees and bushes as landmarks, show promising results over pure learning-based state-of-the-art 3D detectors, while being significant faster.
机译:与抽象特征相比,重要的物体,所谓的地标,是车辆本地化和导航的更自然的手段,尤其是在挑战的非结构化环境中。主要挑战是识别各种照明条件和改变环境(植被)的地标,同时只有很少有训练样本。我们提出了一种新的方法,利用深度学习以及基于模型的方法来克服大数据集的需要。使用RGB图像和光检测和测距(LIDAR)点云,我们的方法将卷积神经网络(CNN)的最先进的分类结果与基于鲁棒的模型的方法相结合,通过考虑到之前的时间步骤之前了解了基于鲁棒的模型的方法。对挑战性的真实情况的评估,具有树木和灌木作为地标,表明了纯粹的学习 - 最先进的3D探测器的有希望的结果,同时更快。

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