RoboCrowd: Scaling Robot Data Collection through Crowdsourcing
Suvir Mirchandani, David D. Yuan, Kaylee Burns, Md Sazzad Islam, Tony Z. Zhao, Chelsea Finn, Dorsa Sadigh

TL;DR
RoboCrowd introduces a crowdsourcing approach with incentive mechanisms to efficiently collect large-scale robot demonstration data, significantly reducing data collection effort and improving policy training performance.
Contribution
This paper presents RoboCrowd, a novel crowdsourcing framework with incentive designs for scalable robot data collection, validated through a large-scale field experiment.
Findings
Over 200 volunteers contributed 800+ interaction episodes.
Incentive mechanisms effectively increased data quantity and quality.
Pre-training with crowdsourced data improved robot policy performance by up to 20%.
Abstract
In recent years, imitation learning from large-scale human demonstrations has emerged as a promising paradigm for training robot policies. However, the burden of collecting large quantities of human demonstrations is significant in terms of collection time and the need for access to expert operators. We introduce a new data collection paradigm, RoboCrowd, which distributes the workload by utilizing crowdsourcing principles and incentive design. RoboCrowd helps enable scalable data collection and facilitates more efficient learning of robot policies. We build RoboCrowd on top of ALOHA (Zhao et al. 2023) -- a bimanual platform that supports data collection via puppeteering -- to explore the design space for crowdsourcing in-person demonstrations in a public environment. We propose three classes of incentive mechanisms to appeal to users' varying sources of motivation for interacting with…
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Taxonomy
TopicsMobile Crowdsensing and Crowdsourcing · Modular Robots and Swarm Intelligence · Reinforcement Learning in Robotics
