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Visual Intention Classification by Deep Learning for Gaze-based Human-Robot Interaction

机译:基于凝视的人体机器人互动深度学习的视觉意向分类

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In this work, we propose a deep learning model to classify a human’s visual intention in gaze-based Human-Robot Interaction(HRI). We consider a scenario in which a human wears a pair of eye tracking glasses and can select an object by gaze and a robotic manipulator picks up the object. A neural network is trained as a binary classifier to classify if a human is looking at an object. The network architecture is based on Fully Convolutional Net(FCN), Convolutional Block Attention Modules(CBAM) and Residual Blocks. We evaluate our model with two experiments. In one experiment we test the performance in the scenario where only a single object exists and the other one multiple objects exist. The results show that our proposed network is accurate and it can generalize well. The F1 score on the single object is 0.971 and 0.962 on multiple objects.
机译:在这项工作中,我们提出了深入的学习模型,以对基于凝视的人体机器人相互作用(HRI)进行分类。 我们考虑一种人类佩戴一对眼睛跟踪眼镜的场景,并且可以通过凝视和机器人机器人拾取物体来选择物体。 神经网络被培训为二进制分类器,以分类人类是否正在查看对象。 网络架构基于完全卷积的网(FCN),卷积阻滞注意模块(CBAM)和残差块。 我们用两个实验评估我们的模型。 在一个实验中,我们在仅存在单个对象的场景中测试性能,并且存在其他一个对象。 结果表明,我们的建议网络是准确的,它可以概括很好。 单个对象上的F1分数为0.971和0.962上的多个物体。

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