Automating garment manipulation is challenging due to extremely high variability in object configurations. To reduce this intrinsic variation, we introduce the task of "canonicalized-alignment" that simplifies downstream applications by reducing the possible garment configurations. This task can be considered as "cloth state funnel" that manipulates arbitrarily configured clothing items into a predefined deformable configuration (i.e. canonicalization) at an appropriate rigid pose (i.e. alignment). In the end, the cloth items will result in a compact set of structured and highly visible configurations - which are desirable for downstream manipulation skills. To enable this task, we propose a novel canonicalized-alignment objective that effectively guides learning to avoid adverse local minima during learning. Using this objective, we learn a multi-arm, multi-primitive policy that strategically chooses between dynamic flings and quasi-static pick and place actions to achieve efficient canonicalized-alignment. We evaluate this approach on a real-world ironing and folding system that relies on this learned policy as the common first step. Empirically, we demonstrate that our task-agnostic canonicalized-alignment can enable even simple manually-designed policies to work well where they were previously inadequate, thus bridging the gap between automated non-deformable manufacturing and deformable manipulation. Code and qualitative visualizations are available at https://clothfunnels.cs.columbia.edu/. Video can be found at https://www.youtube.com/watch?v=TkUn0b7mbj0.
翻译:自动化服装操作之所以具有挑战性,是因为物体配置的变异性极高。 为了减少这种内在的变异性, 我们引入了“ 硬化对齐” 任务, 通过减少可能的服装配置简化下游应用程序。 这个任务可以被视为“ 毛状州漏斗 ”, 将任意配置的服装项目操作成一个预先定义的变形( 坎尼化), 以适当的刻板布局( 即对齐 ) 。 最后, 布项目将产生一组结构化和高可见的组合, 这对于下游操作技能是可取的。 为了能够完成这项任务, 我们提出一个新的 Cancializal- 匹配目标, 有效地引导学习避免不利的本地迷你配置。 使用这个目标, 我们学习了一种多重的、 多重的防腐蚀性政策, 战略性地选择动态的和准静态的调色色调( obli) 。 我们可以在现实世界的铁化和折叠化系统上评估这个方法, 以这一学习的政策作为共同步骤。 Emplicol- dealdealalalalalalal laction laction salation salization