Robotic arms are widely used in automatic industries. However, with wide applications of deep learning in robotic arms, there are new challenges such as the allocation of grasping computing power and the growing demand for security. In this work, we propose a robotic arm grasping approach based on deep learning and edge-cloud collaboration. This approach realizes the arbitrary grasp planning of the robot arm and considers the grasp efficiency and information security. In addition, the encoder and decoder trained by GAN enable the images to be encrypted while compressing, which ensures the security of privacy. The model achieves 92% accuracy on the OCID dataset, the image compression ratio reaches 0.03%, and the structural difference value is higher than 0.91.
翻译:机器人武器被广泛用于自动工业。然而,随着机器人武器中深层学习的广泛应用,出现了新的挑战,如掌握计算能力的分配和安全需求不断增加。在这项工作中,我们提议了基于深层次学习和边宽合作的机器人手臂捕捉方法。这一方法实现了机器人臂的任意捕捉规划,并考虑了捕捉效率和信息安全。此外,GAN所培训的编码器和解码器使图像在压缩时得以加密,从而确保隐私安全。模型在OCID数据集中实现了92%的准确性,图像压缩率达到0.03%,结构差异值高于0.91。