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DepthCache: Depth-Guided Training-Free Visual Token Merging for Vision-Language-Action Model Inference

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Vision-Language-Action (VLA) models enable generalist robotic manipulation but suffer from high inference latency. This bottleneck stems from the massive number of visual tokens processed by large language backbones. Existing methods either prune or merge tokens uniformly, degrading the spatial reasoning essential for robotic control. We present DepthCache, a training-free framework that leverages depth as a structural prior for visual token compression. It partitions observations into depth-based regions and applies spatially differentiated merge ratios, preserving the near-field workspace while compressing the distant background. To exploit temporal redundancy, DepthCache distributes the merging process across consecutive frames, ensuring consistent representations while reducing per-step computation. A motion-adaptive pipeline further optimizes auxiliary view compression based on end-effector dynamics. The framework requires no model modification, generalizing across diverse VLA architectures. On the LIBERO benchmark, DepthCache achieves up to 1.28x inference speedup with less than 1% average success rate degradation across three VLA models (pi_0.5, OpenVLA, GR00T), whereas pruning and merging baselines incur 4--24% degradation at comparable compression. Real-world experiments on a physical manipulator demonstrate that DepthCache enables faster task throughput and more responsive closed-loop control in latency-sensitive scenarios.

Yuquan Li, Lianjie Ma, Han Ding, Lijun Zhu• 2026

Related benchmarks

TaskDatasetResultRank
Robotic ManipulationLIBERO 1.0 (test)
Long96.1
40
pick placeAgileX PiPER real-world
Success Rate20
14
Perturbation RecoveryReal-world PIPER robotic arm, 15 trials
Success Rate12
2
Drawer & PlacePIPER robotic arm Real-world
Success Rate75
2
Multi-Object SortingPIPER Real-world robotic arm 15 trials
Success Rate13
2
Robot Manipulation SuiteReal-world PIPER robotic arm
Total Successes (out of 60)52
2
stack blocksReal-world PIPER robotic arm
Success Rate85
2
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