RetroHolmes: When Semantic Plausibility Fails Retrospective Physical Process Reasoning
2026-07-13 • Multimedia
Multimedia
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Authors
Ruoxuan Zhang, Qiyun Zheng, Siyu Wu, Ling Zou, Hongxia Xie, Zhiyu Zhou, Jian-Yu Jiang-Lin, Zihan Li, Zhengguang Wang, Bin Wen, Ling Lo, Jianlong Fu, Meibao Yao, Juncheng Hu, Wen-Huang Cheng
Abstract
Humans can infer hidden physical processes from sparse observations, yet current evaluation protocols for Vision Language Models fail to assess whether such physical reasoning is genuinely captured. To address this gap, we introduce Retrospective Physical Process Reasoning, a new evaluation paradigm to reason backward from outcomes under explicit physical constraints. Building on the paradigm, we present RetroHolmes, the first real-world benchmark for Retrospective Physical Process Reasoning, comprising object-centric image pairs annotated with reachability labels and causal step sequences across diverse physical transitions. Using RetroHolmes, we analyze state of the art Vision Language Models and uncover systematic failure modes, including judgment bias in reachability assessment and belief dominance over physical evidence, mirroring sycophancy behavior observed in large language models. We further demonstrate a simple analysis-by-synthesis instantiation with visual simulation as an intermediate step, validating the diagnostic value of RetroHolmes and highlighting the importance of physically grounded intermediate representations for physical reasoning.