论文标题
模棱两可的转运蛋白网络
Equivariant Transporter Network
论文作者
论文摘要
运输网是最近提出的选择的框架,可以从很少的专家演示中学习良好的操纵政策。转运蛋白网络如此有效的关键原因是该模型将旋转模棱两可纳入挑选模块,即,该模型立即将学习的挑选知识推广到不同方向上显示的对象。本文提出了一种新型的运输网络,该版本与挑选和位置方向一样。结果,我们的模型像以前一样概括了选择知识,也立即将知识放置在不同的位置方向上。最终,我们的新模型比基线转运蛋白网模型更有效地有效,并且取得成功率更好。
Transporter Net is a recently proposed framework for pick and place that is able to learn good manipulation policies from a very few expert demonstrations. A key reason why Transporter Net is so sample efficient is that the model incorporates rotational equivariance into the pick module, i.e. the model immediately generalizes learned pick knowledge to objects presented in different orientations. This paper proposes a novel version of Transporter Net that is equivariant to both pick and place orientation. As a result, our model immediately generalizes place knowledge to different place orientations in addition to generalizing pick knowledge as before. Ultimately, our new model is more sample efficient and achieves better pick and place success rates than the baseline Transporter Net model.