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Supervised and unsupervised learning in vision-guided robotic bin picking applications for mixed-model assembly

机译:在混合模型组装的视觉引导机器人箱拣选应用中监督和无监督学习

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Mixed-model assembly usually involves numerous component variants that require effective materials supply. Here, picking activities are often performed manually, but the prospect of robotics for bin picking has potential to improve quality while reducing man-hour consumption. Robots can make use of vision systems to learn how to perform their tasks. This paper aims to understand the differences in two learning approaches, supervised learning, and unsupervised learning. An experiment containing engineering preparation time (EPT) and recognition quality (RQ) is performed. The findings show an improved RQ but longer EPT with a supervised compared to an unsupervised approach.
机译:混合模型组件通常涉及许多需要有效材料供应的组件变体。 在这里,采摘活动通常是手动进行的,但是箱子采摘的机器人的前景有可能提高质量,同时降低人小时消耗。 机器人可以使用视觉系统来学习如何执行任务。 本文旨在了解两种学习方法,监督学习和无监督学习的差异。 进行含有工程准备时间(EPT)和识别质量(RQ)的实验。 与无监督的方法相比,调查结果显示了改进的RQ,但更长的ept与监督。

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