Team KTH’s Picking Solution for the Amazon Picking Challenge 2016

In this work we summarize the solution developed by Team KTH for the Amazon Picking Challenge 2016 in Leipzig, Germany. The competition simulated a warehouse automation scenario and it was divided ...

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