Deep Value of Information Estimators for Collaborative Human-Machine Information Gathering

Kin Gwn Lore, Nicholas Sweet, Kundan Kumar, N. Ahmed, S. Sarkar
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引用次数: 21

Abstract

Effective human-machine collaboration can significantly improve many learning and planning strategies for information gathering via fusion of 'hard' and 'soft' data originating from machine and human sensors, respectively. However, gathering the most informative data from human sensors without task overloading remains a critical technical challenge. In this context, Value of Information (VOI) is a crucial decision- theoretic metric for scheduling interaction with human sensors. We present a new Deep Learning based VOI estimation framework that can be used to schedule collaborative human-machine sensing with efficient online inference and minimal policy hand-tuning. Supervised learning is used to train deep convolutional neural networks (CNNs) to extract hierarchical features from 'images' of belief spaces obtained via data fusion. These features can be associated with soft data query choices to reliably compute VOI for human interaction. The CNN framework is described in detail, and a performance comparison to a feature- based POMDP scheduling policy is provided. The practical feasibility of our method is also demonstrated on a mobile robotic search problem with language-based semantic human sensor inputs.
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信息估计器在人机协同信息收集中的深层价值
有效的人机协作可以通过融合分别来自机器和人类传感器的“硬”和“软”数据,显著改善许多信息收集的学习和规划策略。然而,如何在不超载的情况下从人体传感器中收集到最具信息量的数据仍然是一个关键的技术挑战。在这种情况下,信息价值(VOI)是调度与人类传感器交互的关键决策理论度量。我们提出了一种新的基于深度学习的VOI估计框架,该框架可用于调度人机协作感知,具有高效的在线推理和最小的策略手动调整。监督学习用于训练深度卷积神经网络(cnn)从通过数据融合获得的信念空间的“图像”中提取层次特征。这些特性可以与软数据查询选项相关联,以可靠地计算人机交互的VOI。详细描述了CNN框架,并提供了与基于特征的POMDP调度策略的性能比较。在一个基于语言的语义人类传感器输入的移动机器人搜索问题上也证明了我们方法的实际可行性。
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ICCPS '21: ACM/IEEE 12th International Conference on Cyber-Physical Systems, Nashville, Tennessee, USA, May 19-21, 2021 Demo Abstract: SURE: An Experimentation and Evaluation Testbed for CPS Security and Resilience Poster Abstract: Thermal Side-Channel Forensics in Additive Manufacturing Systems Exploiting Wireless Channel Randomness to Generate Keys for Automotive Cyber-Physical System Security WiP Abstract: Platform for Designing and Managing Resilient and Extensible CPS
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