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Keyu Pan

Possible papers associated with this exact author name in Arrow. This page groups case-insensitive exact name matches and is not a full identity disambiguation profile.

3 papers
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3

AAAI Conference 2026 Conference Paper

How Foundational Skills Influence VLM-based Embodied Agents: A Native Perspective

  • Bo Peng
  • Pi Bu
  • Keyu Pan
  • Xinrun Xu
  • Yingxiu Zhao
  • Miao Chen
  • Yang Du
  • Lin Li

Recent advances in vision–language models (VLMs) have shed light on human-level embodied intelligence. However, existing benchmarks for VLM-driven embodied agents still rely on high-level commands or discretised action spaces—``non-native'' settings that diverge markedly from the real world. Moreover, current benchmarks focus exclusively on high-level tasks, while lacking joint evaluation and analysis on both low- and high-level. To bridge these gaps, we present \textbf{NativeEmbodied}, a challenging benchmark for VLM-driven embodied agents that adopts a unified, native low-level action space. Built upon diverse simulated scenes, NativeEmbodied first designs three representative high-level tasks in complex scenarios to evaluate overall performance. For more detailed and comprehensive performance analysis, we further decouple the entangled skills behind complex tasks and construct four types of low-level tasks, each corresponding to a key fundamental embodied skill. This joint evaluation across task and skill granularities enables a fine-grained assessment of embodied agent. Comprehensive experiments on the best VLMs reveal pronounced deficiencies in certain fundamental embodied skills. Further analysis shows that these bottlenecks severely constrain performance on high-level tasks. Our NativeEmbodied not only pinpoints the key challenges faced by current VLM-driven embodied agents, but also provides valuable insight for future development of this field.

YNIMG Journal 2024 Journal Article

Brain extended and closed forms glutathione levels decrease with age and extended glutathione is associated with visuospatial memory

  • Xin Hu
  • Keyu Pan
  • Min Zhao
  • Jiali Lv
  • Jing Wang
  • Xiaofeng Zhang
  • Yuxi Liu
  • Yulu Song

During aging, the brain is subject to greater oxidative stress (OS), which is thought to play a critical role in cognitive impairment. Glutathione (GSH), as a major antioxidant in the brain, can be used to combat OS. However, how brain GSH levels vary with age and their associations with cognitive function is unclear. In this study, we combined point-resolved spectroscopy and edited spectroscopy sequences to investigate extended and closed forms GSH levels in the anterior cingulate cortex (ACC), posterior cingulate cortex (PCC), and occipital cortex (OC) of 276 healthy participants (extended form, 166 females, age range 20-70 years) and 15 healthy participants (closed form, 7 females, age range 26-56 years), and examined their relationships with age and cognitive function. The results revealed decreased extended form GSH levels with age in the PCC among 276 participants. Notably, the timecourse of extended form GSH level changes in the PCC and ACC differed between males and females. Additionally, positive correlations were observed between extended form GSH levels in the PCC and OC and visuospatial memory. Additionally, a decreased trend of closed form GSH levels with age was also observed in the PCC among 15 participants. Taken together, these findings enhance our understanding of the brain both closed and extended form GSH time course during normal aging and associations with sex and memory, which is an essential first step for understanding the neurochemical underpinnings of healthy aging.

AAMAS Conference 2021 Conference Paper

Fast Adaptation to External Agents via Meta Imitation Counterfactual Regret Advantage

  • Mingyue Zhang
  • Zhi Jin
  • Yang Xu
  • Zehan Shen
  • Kun Liu
  • Keyu Pan

This paper focuses on the multi-agent credit assignment problem. We propose a novel multi-agent reinforcement learning algorithm called meta imitation counterfactual regret advantage (MICRA) and a three-phase framework for training, adaptation, and execution of MICRA. The key features are: (1) a counterfactual regret advantage is proposed to optimize the target agents’ policy; (2) a meta-imitator is designed to infer the external agents’ policies. Results show that MICRA outperforms state-of-the-art algorithms.