FLIP: Flow-Centric Generative Planning as General-Purpose Manipulation World Model
Chongkai Gao, Haozhuo Zhang, Zhixuan Xu, Zhehao Cai, Lin Shao

TL;DR
FLIP introduces a flow-centric generative planning framework that leverages visual and language inputs to synthesize long-horizon plans for manipulation tasks, improving success rates and enabling robot control.
Contribution
The paper presents FLIP, a novel model-based planning algorithm using flow and video generation modules for general-purpose manipulation with vision-language inputs.
Findings
Enhanced success rates in long-horizon planning tasks
Effective synthesis of object- and robot-aware plans
Guidance for training low-level control policies
Abstract
We aim to develop a model-based planning framework for world models that can be scaled with increasing model and data budgets for general-purpose manipulation tasks with only language and vision inputs. To this end, we present FLow-centric generative Planning (FLIP), a model-based planning algorithm on visual space that features three key modules: 1. a multi-modal flow generation model as the general-purpose action proposal module; 2. a flow-conditioned video generation model as the dynamics module; and 3. a vision-language representation learning model as the value module. Given an initial image and language instruction as the goal, FLIP can progressively search for long-horizon flow and video plans that maximize the discounted return to accomplish the task. FLIP is able to synthesize long-horizon plans across objects, robots, and tasks with image flows as the general action…
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Taxonomy
TopicsAI-based Problem Solving and Planning · Robotic Path Planning Algorithms
MethodsFLIP
