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AffordVLA: Injecting Affordance Representations into Vision-Language-Action Models via Implicit Feature Alignment

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Recent advances in Vision-Language-Action (VLA) models have shown strong potential for general-purpose robotic manipulation. However, the visual representations of most VLA models are often dominated by global object appearance and struggle to focus on task-relevant functional interaction regions, which limits their robustness in unstructured environments. Existing affordance-based methods typically rely on explicit mask injection or external perception modules, requiring additional annotations while introducing cascading perception errors and inference overhead. To address these limitations, we propose AffordVLA, an affordance-enhanced VLA framework that internalizes manipulation-centric affordance perception into VLA visual representations through implicit representation alignment. Specifically, we construct a zero-shot affordance teacher to extract task-conditioned affordance visual representations from RGB observations and language instructions. AffordVLA aligns the intermediate visual representations of the VLA with the affordance visual representations extracted by the teacher, thereby implicitly injecting manipulation-centric affordance perception into VLA visual representations and improving action accuracy. Extensive simulation and real-world experiments demonstrate that AffordVLA and its affordance teacher achieve state-of-the-art performance and outperform strong baselines. Ablation analyses show that AffordVLA effectively reshapes VLA visual representations while preserving inference efficiency, leading to improved manipulation success rates and training efficiency.

Weijie Kong, Zhian Su, Wei Yu, Huixu Dong• 2026

Related benchmarks

TaskDatasetResultRank
Affordance predictionAGD20K unseen
KLD0.905
20
Robotic ManipulationRoboTwin Hard 2.0
Beat Block Hammer Success Rate29
14
Robotic ManipulationRoboTwin Easy 2.0
Success Rate: Beat Block Hammer68
6
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