With the rapid advancement of low-altitude remote sensing and Vision-Language Models (VLMs), Embodied Agents based on Unmanned Aerial Vehicles (UAVs) have shown significant potential in autonomous tasks. However, current evaluation methods for UAV-Embodied Agents (UAV-EAs) remain constrained by the lack of standardized benchmarks, diverse testing scenarios and open system interfaces. To address these challenges, we propose BEDI (Benchmark for Embodied Drone Intelligence), a systematic and standardized benchmark designed for evaluating UAV-EAs. Specifically, we introduce a novel Dynamic Chain-of-Embodied-Task paradigm based on the perception-decision-action loop, which decomposes complex UAV tasks into standardized, measurable subtasks. Building on this paradigm, we design a unified evaluation framework encompassing six core sub-skills: semantic perception, spatial perception, motion control, tool utilization, task planning and action generation. Furthermore, we develop a hybrid testing platform that incorporates a wide range of both virtual and real-world scenarios, enabling a comprehensive evaluation of UAV-EAs across diverse contexts. The platform also offers open and standardized interfaces, allowing researchers to customize tasks and extend scenarios, thereby enhancing flexibility and scalability in the evaluation process. Finally, through empirical evaluations of several state-of-the-art (SOTA) VLMs, we reveal their limitations in embodied UAV tasks, underscoring the critical role of the BEDI benchmark in advancing embodied intelligence research and model optimization. By filling the gap in systematic and standardized evaluation within this field, BEDI facilitates objective model comparison and lays a robust foundation for future development in this field. Our benchmark is now publicly available at https://github.com/lostwolves/BEDI.
翻译:随着低空遥感与视觉语言模型(VLMs)的快速发展,基于无人机(UAV)的具身智能体在自主任务中展现出巨大潜力。然而,当前对无人机具身智能体(UAV-EAs)的评估方法仍受限于缺乏标准化基准、多样化测试场景以及开放系统接口。为应对这些挑战,我们提出了BEDI(无人机具身智能基准),这是一个为评估UAV-EAs而设计的系统化、标准化基准。具体而言,我们基于感知-决策-行动循环,提出了一种新颖的动态具身任务链范式,将复杂的无人机任务分解为标准化的、可度量子任务。基于此范式,我们设计了一个统一的评估框架,涵盖六大核心子技能:语义感知、空间感知、运动控制、工具使用、任务规划与动作生成。此外,我们开发了一个混合测试平台,整合了广泛的虚拟与现实场景,支持在不同情境下对UAV-EAs进行全面评估。该平台还提供了开放且标准化的接口,允许研究者自定义任务并扩展场景,从而增强评估过程的灵活性与可扩展性。最后,通过对多个前沿视觉语言模型(SOTA VLMs)的实证评估,我们揭示了它们在无人机具身任务中的局限性,凸显了BEDI基准在推动具身智能研究与模型优化中的关键作用。通过填补该领域系统化、标准化评估的空白,BEDI促进了客观的模型比较,并为该领域的未来发展奠定了坚实基础。我们的基准已公开于https://github.com/lostwolves/BEDI。