Due to the high dimensionality of object states, a garment flattening pipeline requires recognising the configurations of garments for a robot to produce/select manipulation plans to flatten garments. In this paper, we propose a data-centric approach to identify known configurations of garments based on a known configuration network (KCNet) trained on depth images that capture the known configurations of garments and prior knowledge of garment shapes. In this paper, we propose a data-centric approach to identify the known configurations of garments based on a known configuration network (KCNet) trained on the depth images that capture the known configurations of garments and prior knowledge of garment shapes. The known configurations of garments are the configurations of garments when a robot hangs garments in the middle of the air. We found that it is possible to achieve 92\% accuracy if we let the robot recognise the common hanging configurations (the known configurations) of garments. We also demonstrate an effective robot garment flattening pipeline with our proposed approach on a dual-arm Baxter robot. The robot achieved an average operating time of 221.6 seconds and successfully manipulated garments of five different shapes.
翻译:由于物体状态的高度维度, 织物平板管道需要识别机器人制作/ 选择制衣图案的服装配置。 在本文中, 我们提出基于已知配置网络( KCNet) 的已知服装配置的数据中心方法, 来识别已知的服装配置。 我们发现, 如果我们让机器人识别共同的挂牌配置( 已知配置) 服装, 就可能实现92- 准确性。 我们还展示了一种有效的机器人服装固定式管道, 其方法是用我们提议的双臂巴克斯特机器人。 机器人的平均操作时间为221.6 秒, 并成功地操控了五种不同形状的服装 。