CVLGJul 7, 2025

Motion Generation: A Survey of Generative Approaches and Benchmarks

arXiv:2507.05419v16 citationsh-index: 8
Originality Synthesis-oriented
AI Analysis

It addresses the need for a structured review to compare diverse generative approaches in motion generation, which is incremental as it synthesizes existing literature without introducing new methods.

This survey categorizes recent motion generation methods based on generative strategies, focusing on papers from top-tier venues since 2023, and analyzes architectural principles, conditioning mechanisms, and evaluation metrics to provide a foundational reference for researchers.

Motion generation, the task of synthesizing realistic motion sequences from various conditioning inputs, has become a central problem in computer vision, computer graphics, and robotics, with applications ranging from animation and virtual agents to human-robot interaction. As the field has rapidly progressed with the introduction of diverse modeling paradigms including GANs, autoencoders, autoregressive models, and diffusion-based techniques, each approach brings its own advantages and limitations. This growing diversity has created a need for a comprehensive and structured review that specifically examines recent developments from the perspective of the generative approach employed. In this survey, we provide an in-depth categorization of motion generation methods based on their underlying generative strategies. Our main focus is on papers published in top-tier venues since 2023, reflecting the most recent advancements in the field. In addition, we analyze architectural principles, conditioning mechanisms, and generation settings, and compile a detailed overview of the evaluation metrics and datasets used across the literature. Our objective is to enable clearer comparisons and identify open challenges, thereby offering a timely and foundational reference for researchers and practitioners navigating the rapidly evolving landscape of motion generation.

Foundations

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

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