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Main Authors: Mirchandani, Suvir, Tang, Mia, Duan, Jiafei, Hamid, Jubayer Ibn, Cho, Michael, Sadigh, Dorsa
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.21235
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author Mirchandani, Suvir
Tang, Mia
Duan, Jiafei
Hamid, Jubayer Ibn
Cho, Michael
Sadigh, Dorsa
author_facet Mirchandani, Suvir
Tang, Mia
Duan, Jiafei
Hamid, Jubayer Ibn
Cho, Michael
Sadigh, Dorsa
contents Imitation learning from human demonstrations has become a dominant approach for training autonomous robot policies. However, collecting demonstration datasets is costly: it often requires access to robots and needs sustained effort in a tedious, long process. These factors limit the scale of data available for training policies. We aim to address this scalability challenge by involving a broader audience in a gamified data collection experience that is both accessible and motivating. Specifically, we develop a gamified remote teleoperation platform, RoboCade, to engage general users in collecting data that is beneficial for downstream policy training. To do this, we embed gamification strategies into the design of the system interface and data collection tasks. In the system interface, we include components such as visual feedback, sound effects, goal visualizations, progress bars, leaderboards, and badges. We additionally propose principles for constructing gamified tasks that have overlapping structure with useful downstream target tasks. We instantiate RoboCade on three manipulation tasks -- including spatial arrangement, scanning, and insertion. To illustrate the viability of gamified robot data collection, we collect a demonstration dataset through our platform, and show that co-training robot policies with this data can improve success rate on non-gamified target tasks (+16-56%). Further, we conduct a user study to validate that novice users find the gamified platform significantly more enjoyable than a standard non-gamified platform (+24%). These results highlight the promise of gamified data collection as a scalable, accessible, and engaging method for collecting demonstration data.
format Preprint
id arxiv_https___arxiv_org_abs_2512_21235
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle RoboCade: Gamifying Robot Data Collection
Mirchandani, Suvir
Tang, Mia
Duan, Jiafei
Hamid, Jubayer Ibn
Cho, Michael
Sadigh, Dorsa
Robotics
Imitation learning from human demonstrations has become a dominant approach for training autonomous robot policies. However, collecting demonstration datasets is costly: it often requires access to robots and needs sustained effort in a tedious, long process. These factors limit the scale of data available for training policies. We aim to address this scalability challenge by involving a broader audience in a gamified data collection experience that is both accessible and motivating. Specifically, we develop a gamified remote teleoperation platform, RoboCade, to engage general users in collecting data that is beneficial for downstream policy training. To do this, we embed gamification strategies into the design of the system interface and data collection tasks. In the system interface, we include components such as visual feedback, sound effects, goal visualizations, progress bars, leaderboards, and badges. We additionally propose principles for constructing gamified tasks that have overlapping structure with useful downstream target tasks. We instantiate RoboCade on three manipulation tasks -- including spatial arrangement, scanning, and insertion. To illustrate the viability of gamified robot data collection, we collect a demonstration dataset through our platform, and show that co-training robot policies with this data can improve success rate on non-gamified target tasks (+16-56%). Further, we conduct a user study to validate that novice users find the gamified platform significantly more enjoyable than a standard non-gamified platform (+24%). These results highlight the promise of gamified data collection as a scalable, accessible, and engaging method for collecting demonstration data.
title RoboCade: Gamifying Robot Data Collection
topic Robotics
url https://arxiv.org/abs/2512.21235