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Analysis and Observations From the First Amazon Picking Challenge

Nikolaus Correll, Kostas E. Bekris, Dmitry Berenson, Oliver Brock, Albert Causo, Kris Hauser, Kei Okada, Alberto Rodríguez, Joseph M. Romano, Peter R. Wurman

Year
2016
Citations
425

Abstract

This paper presents an overview of the inaugural Amazon Picking Challenge along with a summary of a survey conducted among the 26 participating teams. The challenge goal was to design an autonomous robot to pick items from a warehouse shelf. This task is currently performed by human workers, and there is hope that robots can someday help increase efficiency and throughput while lowering cost. We report on a 28-question survey posed to the teams to learn about each team's background, mechanism design, perception apparatus, planning, and control approach. We identify trends in this data, correlate it with each team's success in the competition, and discuss observations and lessons learned based on survey results and the authors' personal experiences during the challenge.

Keywords

Task (project management)RobotAmazon rainforestComputer scienceControl (management)PerceptionData scienceOperations researchKnowledge managementArtificial intelligence

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