Temporal Realism Evaluation of Generated Videos Using Compressed-Domain Motion Vectors
Mert Onur Cakiroglu, Idil Bilge Altun, Zhihe Lu, Mehmet Dalkilic, Hasan Kurban

TL;DR
This paper proposes a scalable, compressed-domain motion vector-based framework to evaluate the temporal realism of generated videos, revealing motion discrepancies and improving discrimination accuracy.
Contribution
It introduces a novel, lightweight method using compressed video motion vectors for temporal realism assessment and enhances discriminative models with MV-based fusion techniques.
Findings
Motion vectors reveal systematic motion discrepancies in generated videos.
MV-based features improve real-vs-generated classification accuracy.
Compressed-domain MVs effectively diagnose motion defects in generative videos.
Abstract
Temporal realism remains a central weakness of current generative video models, as most evaluation metrics prioritize spatial appearance and offer limited sensitivity to motion. We introduce a scalable, model-agnostic framework that assesses temporal behavior using motion vectors (MVs) extracted directly from compressed video streams. Codec-generated MVs from standards such as H.264 and HEVC provide lightweight, resolution-consistent descriptors of motion dynamics. We quantify realism by computing Kullback-Leibler, Jensen-Shannon, and Wasserstein divergences between MV statistics of real and generated videos. Experiments on the GenVidBench dataset containing videos from eight state-of-the-art generators reveal systematic discrepancies from real motion: entropy-based divergences rank Pika and SVD as closest to real videos, MV-sum statistics favor VC2 and Text2Video-Zero, and CogVideo…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Human Pose and Action Recognition · Anomaly Detection Techniques and Applications
