AI RESEARCH

Self-Consistency for LLM-Based Motion Trajectory Generation and Verification

arXiv CS.CV

ArXi:2603.29301v1 Announce Type: new Self-consistency has proven to be an effective technique for improving LLM performance on natural language reasoning tasks in a lightweight, unsupervised manner. In this work, we study how to adapt self-consistency to visual domains. Specifically, we consider the generation and verification of LLM-produced motion graphics trajectories. Given a prompt (e.g., "Move the circle in a spiral path"), we first sample diverse motion trajectories from an LLM, and then identify groups of consistent trajectories via clustering.