In this paper, a novel robotic grasping system is established to automatically pick up objects in cluttered scenes. A composite robotic hand composed of a suction cup and a gripper is designed for grasping the object stably. The suction cup is used for lifting the object from the clutter first and the gripper for grasping the object accordingly. We utilize the affordance map to provide pixel-wise lifting point candidates for the suction cup. To obtain a good affordance map, the active exploration mechanism is introduced to the system. An effective metric is designed to calculate the reward for the current affordance map, and a deep Q-Network (DQN) is employed to guide the robotic hand to actively explore the environment until the generated affordance map is suitable for grasping. Experimental results have demonstrated that the proposed robotic grasping system is able to greatly increase the success rate of the robotic grasping in cluttered scenes.
翻译:在本文中,建立了一个新颖的机器人捕捉系统,以自动在乱七八糟的场景中采集物体。设计了一个由吸盘和握柄组成的复合机器人手,以刺切地抓取物体。抽吸杯用于首先把物体从吸尘器中拉开,然后握住物体。我们用花生图为抽吸杯提供像素感测升点候选人。为了获得一个好价钱的地图,系统引入了积极的探索机制。设计了一个有效的衡量标准,以计算当前负担器地图的奖赏,并使用一个深Q-Network(DQN)来指导机器人手积极探索环境,直到生成的花生图适合捕捉为止。实验结果显示,拟议的机器人捕捉系统能够大大提高在乱幕场中捕捉机器人的成功率。