In this paper, we propose a method to align and place a fabric piece on top of another using a dual-arm manipulator and a grayscale camera, so that their surface textures are accurately matched. We propose a novel control scheme that combines Transformer-driven visual servoing with dualarm impedance control. This approach enables the system to simultaneously control the pose of the fabric piece and place it onto the underlying one while applying tension to keep the fabric piece flat. Our transformer-based network incorporates pretrained backbones and a newly introduced Difference Extraction Attention Module (DEAM), which significantly enhances pose difference prediction accuracy. Trained entirely on synthetic images generated using rendering software, the network enables zero-shot deployment in real-world scenarios without requiring prior training on specific fabric textures. Real-world experiments demonstrate that the proposed system accurately aligns fabric pieces with different textures.
翻译:本文提出了一种利用双臂机械臂与灰度相机实现织物片精准叠放对齐的方法,以确保其表面纹理精确匹配。我们设计了一种新颖的控制方案,该方案将Transformer驱动的视觉伺服与双臂阻抗控制相结合。该方法使系统能够同时控制织物片的位姿,并将其铺放至底层织物上,同时施加张力以保持织物片平整。我们基于Transformer的网络融合了预训练骨干网络与新引入的差异提取注意力模块(DEAM),该模块显著提升了位姿差异预测的精度。该网络完全使用渲染软件生成的合成图像进行训练,无需针对特定织物纹理进行先验训练,即可实现真实场景中的零样本部署。真实环境实验表明,所提系统能够准确对齐具有不同纹理的织物片。