Experiments on Learning Based Industrial Bin-picking with Iterative Visual Recognition

Autor: Harada, Kensuke, Wan, Weiwei, Tsuji, Tokuo, Kikuchi, Kohei, Nagata, Kazuyuki, Onda, Hiromu
Rok vydání: 2018
Předmět:
Zdroj: Industrial Robots: an International Journal, 2018
Druh dokumentu: Working Paper
Popis: This paper shows experimental results on learning based randomized bin-picking combined with iterative visual recognition. We use the random forest to predict whether or not a robot will successfully pick an object for given depth images of the pile taking the collision between a finger and a neighboring object into account. For the discriminator to be accurate, we consider estimating objects' poses by merging multiple depth images of the pile captured from different points of view by using a depth sensor attached at the wrist. We show that, even if a robot is predicted to fail in picking an object with a single depth image due to its large occluded area, it is finally predicted as success after merging multiple depth images. In addition, we show that the random forest can be trained with the small number of training data.
Comment: This paper is to appear Industrial Robots: an International Journal
Databáze: arXiv