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Fully convolutional neural networks for dynamic object detection in grid maps

机译:完全卷积神经网络用于网格图中的动态对象检测

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Grid maps are widely used in robotics to represent obstacles in the environment and differentiating dynamic objects from static infrastructure is essential for many practical applications. In this work, we present a methods that uses a deep convolutional neural network (CNN) to infer whether grid cells are covering a moving object or not. Compared to tracking approaches, that use e.g. a particle filter to estimate grid cell velocities and then make a decision for individual grid cells based on this estimate, our approach uses the entire grid map as input image for a CNN that inspects a larger area around each cell and thus takes the structural appearance in the grid map into account to make a decision. Compared to our reference method, our concept yields a performance increase from 83.9% to 97.2%. A runtime optimized version of our approach yields similar improvements with an execution time of just 10 milliseconds.
机译:网格图已广泛用于机器人技术中,用以表示环境中的障碍物,因此,将动态对象与静态基础结构区分开来对于许多实际应用而言至关重要。在这项工作中,我们提出了一种使用深度卷积神经网络(CNN)推断网格单元是否覆盖移动对象的方法。与跟踪方法相比,该方法使用了粒子过滤器来估计栅格单元的速度,然后根据此估计为单个栅格单元做出决策,我们的方法使用整个栅格图作为CNN的输入图像,该CNN检查每个单元周围的较大区域,从而得出结构外观。将网格图考虑在内以做出决定。与参考方法相比,我们的概念将性能从83.9%提高到97.2%。我们的方法的运行时优化版本在执行时间仅为10毫秒的情况下也产生了类似的改进。

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