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simmediumimitationmetric · varies

Saliency-Aware Quantized Imitation Learning for Efficient Robotic Control

Description

Deep neural network (DNN)-based policy models, such as vision-language-action (VLA) models, excel at automating complex decision-making from multi-modal inputs. However, scaling these models greatly increases computational overhead, complicating deployment in resource-constrained settings like robot manipulation and autonomous driving. To address this, we propose Saliency-Aware Quantized Imitation Learning (SQIL), which combines quantization-aware training with a selective loss-weighting strateg

Source

http://arxiv.org/abs/2505.15304v2