Open-sourced, user-friendly tools form the bedrock of scientific advancement
across disciplines. The widespread adoption of data-driven learning has led to
remarkable progress in multi-fingered dexterity, bimanual manipulation, and
applications ranging from logistics to home robotics. However, existing data
collection platforms are often proprietary, costly, or tailored to specific
robotic morphologies. We present OPEN TEACH, a new teleoperation system
leveraging VR headsets to immerse users in mixed reality for intuitive robot
control. Built on the affordable Meta Quest 3, which costs 500,OPENTEACHenablesreal−timecontrolofvariousrobots,includingmulti−fingeredhandsandbimanualarms,throughaneasy−to−useapp.Usingnaturalhandgesturesandmovements,userscanmanipulaterobotsatupto90Hzwithsmoothvisualfeedbackandinterfacewidgetsofferingcloseupenvironmentviews.WedemonstratetheversatilityofOPENTEACHacross38tasksondifferentrobots.AcomprehensiveuserstudyindicatessignificantimprovementinteleoperationcapabilityovertheAnyTeleopframework.Furtherexperimentsexhibitthatthecollecteddataiscompatiblewithpolicylearningon10dexterousandcontact−richmanipulationtasks.CurrentlysupportingFranka,xArm,Jaco,andAllegroplatforms,OPENTEACHisfullyopen−sourcedtopromotebroaderadoption.Videosareavailableathttps://open−teach.github.io/.