LGAIROAug 16, 2024

Diffusion Model for Planning: A Systematic Literature Review

arXiv:2408.10266v119 citationsh-index: 8
Originality Synthesis-oriented
AI Analysis

It synthesizes a rapidly growing field to help researchers understand and promote development, but is incremental as a review.

This paper conducts a systematic literature review on the application of diffusion models to planning tasks, categorizing recent advancements in datasets, efficiency, adaptability, safety, and domain-specific applications like autonomous driving.

Diffusion models, which leverage stochastic processes to capture complex data distributions effectively, have shown their performance as generative models, achieving notable success in image-related tasks through iterative denoising processes. Recently, diffusion models have been further applied and show their strong abilities in planning tasks, leading to a significant growth in related publications since 2023. To help researchers better understand the field and promote the development of the field, we conduct a systematic literature review of recent advancements in the application of diffusion models for planning. Specifically, this paper categorizes and discusses the current literature from the following perspectives: (i) relevant datasets and benchmarks used for evaluating diffusion modelbased planning; (ii) fundamental studies that address aspects such as sampling efficiency; (iii) skill-centric and condition-guided planning for enhancing adaptability; (iv) safety and uncertainty managing mechanism for enhancing safety and robustness; and (v) domain-specific application such as autonomous driving. Finally, given the above literature review, we further discuss the challenges and future directions in this field.

Foundations

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

Your Notes