EPD: Long-term Memory Extraction, Context-aware Planning and Multi-iteration Decision @ EgoPlan Challenge ICML 2024

Published: 10 Aug 2024, Last Modified: 05 Sept 2024MFM-EAI@ICML2024 PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: egocentric task planning, in-context learning, training-free
Abstract: In this technical report, we present our solution for the EgoPlan Challenge in ICML 2024. To address the real-world egocentric task planning problem, we introduce a novel planning framework which comprises three stages: long-term memory Extraction, context-aware Planning, and multi-iteration Decision, named EPD. Given the task goal, task progress, and current observation, the extraction model first extracts task-relevant memory information from the progress video, transforming the complex long video into summarized memory information. The planning model then combines the context of the memory information with fine-grained visual information from the current observation to predict the next action. Finally, through multi-iteration decision-making, the decision model comprehensively understands the task situation and current state to make the most realistic planning decision. On the EgoPlan-Test set, EPD achieves a planning accuracy of 53.85% over 1,584 egocentric task planning questions. We have made all codes available at https://github.com/Kkskkkskr/EPD .
Submission Number: 29
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