Measuring 3D Spatial Geometric Consistency in Dynamic Generated Videos
arXiv cs.CV / 3/20/2026
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Key Points
- The paper shows that existing metrics like FVD fail to capture 3D geometric distortions in dynamically generated videos.
- It introduces SGC, a metric that measures 3D Spatial Geometric Consistency by comparing local camera pose estimates across different static sub-regions.
- The method separates dynamic from static regions, partitions the static background into coherent sub-regions, predicts depth per pixel, and computes divergence among local poses to quantify inconsistencies.
- Experiments with real and generated videos demonstrate that SGC robustly detects geometric failures that prior metrics miss.
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