2022
DOI: 10.48550/arxiv.2203.05187
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Cluttered Food Grasping with Adaptive Fingers and Synthetic-Data Trained Object Detection

Abstract: The food packaging industry handles an immense variety of food products with wide-ranging shapes and sizes, even within one kind of food. Menus are also diverse and change frequently, making automation of pick-and-place difficult. A popular approach to bin-picking is to first identify each piece of food in the tray by using an instance segmentation method. However, human annotations to train these methods are unreliable and error-prone since foods are packed close together with unclear boundaries and visual si… Show more

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