Generalising robotic grasping to previously unseen objects is a key task in general robotic manipulation. The current method for training many antipodal generative grasping models rely on a binary ground truth grasp map generated from the centre thirds of correctly labelled grasp rectangles. However, these binary maps do not accurately reflect the positions in which a robotic arm can correctly grasp a given object. We propose a continuous Gaussian representation of annotated grasps to generate ground truth training data which achieves a higher success rate on a simulated robotic grasping benchmark. Three modern generative grasping networks are trained with either binary or Gaussian grasp maps, along with recent advancements from the robotic grasping literature, such as discretisation of grasp angles into bins and an attentional loss function. Despite negligible difference according to the standard rectangle metric, Gaussian maps better reproduce the training data and therefore improve success rates when tested on the same simulated robot arm by avoiding collisions with the object: achieving 87.94\% accuracy. Furthermore, the best performing model is shown to operate with a high success rate when transferred to a real robotic arm, at high inference speeds, without the need for transfer learning. The system is then shown to be capable of performing grasps on an antagonistic physical object dataset benchmark.
翻译:普通机器人操作中的一项关键任务。 培训许多抗蛋白基因切除模型的当前方法依赖于从正确标记的抓取矩形中枢三分之二正确标记的抓取矩形中心生成的二进制地面真知灼见地图。 但是,这些二进制地图没有准确反映机器人臂能够正确抓住给定对象的位置。 我们建议持续使用附加说明的抓图,以生成地面真象培训数据,从而在模拟机器人抓取基准上实现更高的成功率。 三个现代基因切除抓取模型在二进制地图或高氏掌握图中,以及机器人抓取文献最近的进展,例如将抓取角度分解成文件夹和失去注意力功能。 尽管根据标准的矩形测量标准, 高斯地图可以更好地复制培训数据, 从而通过避免与目标相撞, 实现87- 94 ⁇ 准确度, 从而提高模拟机器人手臂测试的成功率。 此外, 三个现代基因切换模型显示, 向真正的机器人抓抓取物体的手势率很高, 例如将抓取角度角度角度的角角角角角角角角角角角角, 将显示, 进行物理定位速度。