用于非近视在线探索和视觉表面覆盖的主动感知网络

David Vutetakis, Jing Xiao
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摘要

这项研究解决了在线探索和视觉传感器覆盖未知环境的问题。我们引入了一种新颖的感知路线图,我们称之为主动感知网络(APN),它是一个分层拓扑图,描述了如何穿越和感知增量构建的环境空间地图。APN 的状态会逐步更新,以扩展一个连接的配置空间,该空间会尽可能多地扩展到已知空间,并使用高效的差异感知技术来跟踪空间地图的离散变化,为更新提供信息。提出了一种前沿引导方法,用于高效评估信息增益和可视信息,指导视图采样和细化,以确保在 APN 内保持对未绘制空间的最大覆盖。我们将更新后的路线图分层分解为子图区域,用于促进非近视全局视图序列规划。我们对几种最先进的方法进行了比较分析,结果表明,在总探索时间和表面覆盖率方面,该方法的性能有了显著提高,而且计算效率很高,可扩展到大型复杂环境。
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Active perception network for non-myopic online exploration and visual surface coverage
This work addresses the problem of online exploration and visual sensor coverage of unknown environments. We introduce a novel perception roadmap we refer to as the Active Perception Network (APN) that serves as a hierarchical topological graph describing how to traverse and perceive an incrementally built spatial map of the environment. The APN state is incrementally updated to expand a connected configuration space that extends throughout as much of the known space as possible, using efficient difference-awareness techniques that track the discrete changes of the spatial map to inform the updates. A frontier-guided approach is presented for efficient evaluation of information gain and covisible information, which guides view sampling and refinement to ensure maximum coverage of the unmapped space is maintained within the APN. The updated roadmap is hierarchically decomposed into subgraph regions which we use to facilitate a non-myopic global view sequence planner. A comparative analysis to several state-of-the-art approaches was conducted, showing significant performance improvements in terms of total exploration time and surface coverage, and demonstrating high computational efficiency that is scalable to large and complex environments.
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