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CoRMA: Contrastive RMA for Contact-Rich Meta-Adaptation

About

We present CoRMA(Contrastive Robotic Motor Adaptation), a context-based meta-adaptation framework that modifies RMA for force-dominant assembly. CoRMA replaces raw simulator-parameter adaptation with a compact 6D simulator-only semantic contact context describing contact onset, lateral engagement, guided transition, contact direction, and jamming. A deployable causal Transformer adapter infers this context online from force, proprioceptive, and action histories using semantic regression and a force-regime contrastive objective. At deployment, oracle context is removed and replaced by the inferred context, enabling within-episode adaptation without demonstrations, privileged inputs, or gradient updates. We evaluate CoRMA on PegInsert, GearMesh, and NutThread in Isaac Lab / Isaac Sim 5.0 and on a real Marvin arm. Compared with FORGE baselines that achieve high simulation success but degrade substantially on hardware, CoRMA retains higher verified real success under controlled target-pose noise. These results support semantic contact inference as a reusable adaptation interface within a related assembly task family, while broader unseen-task generalization and Real2Sim calibration remain future work.

Wentian Wang, Chutong Wen, Hongxu Ma, Wuhao Wang, Zhexiong Xue, Abdul Haseeb Nizamani, Dandi Zhou, Xinhai Sun, Jianqiao Zhu• 2026

Related benchmarks

TaskDatasetResultRank
Gear MeshingGearMesh Real-robot Physical Marvin robot (test)
Success Rate0.65
2
Nut ThreadingNutThread Simulation Isaac Lab (test)
Success Rate73
2
Nut ThreadingNutThread Real-robot Physical Marvin robot (test)
Success Rate16
2
Peg InsertionPegInsert Real-robot Physical Marvin robot (test)
Success Rate11
2
Gear MeshingGearMesh Simulation Isaac Lab (test)
Success Rate74
2
Peg InsertionPegInsert Simulation Isaac Lab (test)
Success Rate48
2
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