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Published:2025/12/3 21:47:30

未来を予測!VRゲームも異常検知もアゲちゃう動画モーション転送技術ってコト!? ✨

超要約: 未来の動きを多様に予測する技術!VRゲームとかの没入感爆上げ、異常検知の精度も上がるって、最強じゃん?

🌟 ギャル的キラキラポイント ✨

● 多様な未来を予測できるから、VRゲームで「え、こんな展開もアリ!?」ってビックリ体験ができるかも!🎮 ● 工場の不良品を事前にキャッチ!無駄をなくして、コスパ最強のスマートファクトリーを実現できるかも!🏭 ● 遠隔医療で、ロボット手術がもっと安全に!未来の医療を支える技術って、マジすごい👏

詳細解説いくよ~!

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Inference-time Stochastic Refinement of GRU-Normalizing Flow for Real-time Video Motion Transfer

Tasmiah Haque / Srinjoy Das

Real-time video motion transfer applications such as immersive gaming and vision-based anomaly detection require accurate yet diverse future predictions to support realistic synthesis and robust downstream decision making under uncertainty. To improve the diversity of such sequential forecasts we propose a novel inference-time refinement technique that combines Gated Recurrent Unit-Normalizing Flows (GRU-NF) with stochastic sampling methods. While GRU-NF can capture multimodal distributions through its integration of normalizing flows within a temporal forecasting framework, its deterministic transformation structure can limit expressivity. To address this, inspired by Stochastic Normalizing Flows (SNF), we introduce Markov Chain Monte Carlo (MCMC) steps during GRU-NF inference, enabling the model to explore a richer output space and better approximate the true data distribution without retraining. We validate our approach in a keypoint-based video motion transfer pipeline, where capturing temporally coherent and perceptually diverse future trajectories is essential for realistic samples and low bandwidth communication. Experiments show that our inference framework, Gated Recurrent Unit- Stochastic Normalizing Flows (GRU-SNF) outperforms GRU-NF in generating diverse outputs without sacrificing accuracy, even under longer prediction horizons. By injecting stochasticity during inference, our approach captures multimodal behavior more effectively. These results highlight the potential of integrating stochastic dynamics with flow-based sequence models for generative time series forecasting.

cs / cs.CV / cs.LG