CVAIOct 16, 2025

STANCE: Motion Coherent Video Generation Via Sparse-to-Dense Anchored Encoding

arXiv:2510.14588v23 citationsh-index: 7
Originality Incremental advance
AI Analysis

This work addresses motion coherence issues in video generation for AI content creation, representing an incremental improvement with novel components.

The paper tackles the problem of maintaining coherent object motion in video generation by addressing bottlenecks in motion guidance encoding and optimization trade-offs, achieving improved temporal coherence without requiring per-frame trajectory scripts.

Video generation has recently made striking visual progress, but maintaining coherent object motion and interactions remains difficult. We trace two practical bottlenecks: (i) human-provided motion hints (e.g., small 2D maps) often collapse to too few effective tokens after encoding, weakening guidance; and (ii) optimizing for appearance and motion in a single head can favor texture over temporal consistency. We present STANCE, an image-to-video framework that addresses both issues with two simple components. First, we introduce Instance Cues -- a pixel-aligned control signal that turns sparse, user-editable hints into a dense 2.5D (camera-relative) motion field by averaging per-instance flow and augmenting with monocular depth over the instance mask. This reduces depth ambiguity compared to 2D arrow inputs while remaining easy to use. Second, we preserve the salience of these cues in token space with Dense RoPE, which tags a small set of motion tokens (anchored on the first frame) with spatial-addressable rotary embeddings. Paired with joint RGB \(+\) auxiliary-map prediction (segmentation or depth), our model anchors structure while RGB handles appearance, stabilizing optimization and improving temporal coherence without requiring per-frame trajectory scripts.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes