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Merlin:Empowering Multimodal LLMs with Foresight Minds

About

Humans possess the remarkable ability to foresee the future to a certain extent based on present observations, a skill we term as foresight minds. However, this capability remains largely under explored within existing Multimodal Large Language Models (MLLMs), hindering their capacity to learn the fundamental principles of how things operate and the intentions behind the observed subjects. To address this issue, we introduce the integration of future modeling into the existing learning frameworks of MLLMs. By utilizing the subject trajectory, a highly structured representation of a consecutive frame sequence, as a learning objective, we aim to bridge the gap between the past and the future. We propose two innovative methods to empower MLLMs with foresight minds, Foresight Pre-Training (FPT) and Foresight Instruction-Tuning (FIT), which are inspired by the modern learning paradigm of LLMs. Specifically, FPT jointly training various tasks centered on trajectories, enabling MLLMs to learn how to attend and predict entire trajectories from a given initial observation. Then, FIT requires MLLMs to first predict trajectories of related objects and then reason about potential future events based on them. Aided by FPT and FIT, we build a novel and unified MLLM named Merlin that supports multi-images input and analysis about potential actions of multiple objects for the future reasoning. Experimental results show Merlin powerful foresight minds with impressive performance on both future reasoning and visual comprehension tasks.

En Yu, Liang Zhao, Yana Wei, Jinrong Yang, Dongming Wu, Lingyu Kong, Haoran Wei, Tiancai Wang, Zheng Ge, Xiangyu Zhang, Wenbing Tao• 2023

Related benchmarks

TaskDatasetResultRank
Visual Question AnsweringVizWiz
Accuracy50.4
1043
Visual Question AnsweringGQA
Accuracy60.5
963
Visual Object TrackingLaSOT (test)--
444
Visual Object TrackingGOT-10k (test)
Average Overlap51.4
378
Multimodal Model EvaluationMMBench
Accuracy66.2
180
Multimodal Model EvaluationMMBench Chinese
Accuracy65.5
121
Large Multimodal Model EvaluationMM-Vet
Average Score34.9
58
Prediction ReasoningMMBench (dev)
Avg. Accuracy64.4
12
Prediction ReasoningMMBench (test)
Average Score66.5
11
Spatio-Temporal Video GroundingHC-STVG
METEOR11.3
6
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