Score the Steps, Not Just the Goal: VLM-Based Subgoal Evaluation for Robotic Manipulation
September 23, 2025 Β· Declared Dead Β· π arXiv.org
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Authors
Ramy ElMallah, Krish Chhajer, Chi-Guhn Lee
arXiv ID
2509.19524
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.RO
Citations
1
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Robot learning papers typically report a single binary success rate (SR), which obscures where a policy succeeds or fails along a multi-step manipulation task. We argue that subgoal-level reporting should become routine: for each trajectory, a vector of per-subgoal SRs that makes partial competence visible (e.g., grasp vs. pour). We propose a blueprint for StepEval, a cost-aware plug-in evaluation framework that utilizes vision-language models (VLMs) as automated judges of subgoal outcomes from recorded images or videos. Rather than proposing new benchmarks or APIs, our contribution is to outline design principles for a scalable, community-driven open-source project. In StepEval, the primary artifact for policy evaluation is the per-subgoal SR vector; however, other quantities (e.g., latency or cost estimates) are also considered for framework-optimization diagnostics to help the community tune evaluation efficiency and accuracy when ground-truth subgoal success labels are available. We discuss how such a framework can remain model-agnostic, support single- or multi-view inputs, and be lightweight enough to adopt across labs. The intended contribution is a shared direction: a minimal, extensible seed that invites open-source contributions, so that scoring the steps, not just the final goal, becomes a standard and reproducible practice.
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