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What am i doing? Robotic self-action recognition

机译:我在做什么?机器人自我行动识别

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When a robot executes a task, it will be helpful if the robot understands its behavior and can tell people what it is doing. Inspired by previous works of detecting activities in first-person views, we present a novel idea of robotic self-action recognition. To achieve our goal, we not only use the robot's view as visual input, but also adopt the joint information as inner state input, so that we do not have to track the hands positions in the images like other first-person view action detecting methods did, and we are not worried about the hands moving out of view. We introduce a new dataset which consists of some daily tasks, then we evaluate the dataset with our deep learning model, which is based on Long-term Recurrent Convolutional Network(LRCN). Finally, we apply the model to an online system with our robot platform.
机译:当机器人执行任务时,如果机器人了解其行为并可以告诉人们它在做什么,这将是有帮助的。受到先前在第一人称视角中检测活动的工作的启发,我们提出了一种机器人自我行动识别的新思路。为了实现我们的目标,我们不仅使用机器人的视图作为视觉输入,而且还采用关节信息作为内部状态输入,因此我们不必像其他第一人称视角动作检测方法那样跟踪图像中的手部位置。做到了,我们并不担心手会移开视线。我们引入了一个新的数据集,该数据集包含一些日常任务,然后我们使用基于长期递归卷积网络(LRCN)的深度学习模型对数据集进行评估。最后,我们将模型应用于带有机器人平台的在线系统。

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