CVFeb 10

ConsID-Gen: View-Consistent and Identity-Preserving Image-to-Video Generation

arXiv:2602.10113v15 citationsh-index: 11
Originality Incremental advance
AI Analysis

It addresses appearance drift and geometric distortion in image-to-video generation for applications requiring high-fidelity animations, but is incremental as it builds on existing diffusion transformer backbones.

The paper tackles the challenge of preserving object identity and view consistency in image-to-video generation, proposing ConsID-Gen which outperforms leading models like Wan2.1 and HunyuanVideo on metrics for identity fidelity and temporal coherence.

Image-to-Video generation (I2V) animates a static image into a temporally coherent video sequence following textual instructions, yet preserving fine-grained object identity under changing viewpoints remains a persistent challenge. Unlike text-to-video models, existing I2V pipelines often suffer from appearance drift and geometric distortion, artifacts we attribute to the sparsity of single-view 2D observations and weak cross-modal alignment. Here we address this problem from both data and model perspectives. First, we curate ConsIDVid, a large-scale object-centric dataset built with a scalable pipeline for high-quality, temporally aligned videos, and establish ConsIDVid-Bench, where we present a novel benchmarking and evaluation framework for multi-view consistency using metrics sensitive to subtle geometric and appearance deviations. We further propose ConsID-Gen, a view-assisted I2V generation framework that augments the first frame with unposed auxiliary views and fuses semantic and structural cues via a dual-stream visual-geometric encoder as well as a text-visual connector, yielding unified conditioning for a Diffusion Transformer backbone. Experiments across ConsIDVid-Bench demonstrate that ConsID-Gen consistently outperforms in multiple metrics, with the best overall performance surpassing leading video generation models like Wan2.1 and HunyuanVideo, delivering superior identity fidelity and temporal coherence under challenging real-world scenarios. We will release our model and dataset at https://myangwu.github.io/ConsID-Gen.

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