在动态和传感器丰富的环境中用于视觉理解的图像检索

Noah Lesch, Andrew Compton, John M. Pecarina, M. Ippolito, D. Hodson
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引用次数: 2

摘要

视觉对决策至关重要,因为人类天生相信自己的眼睛能增强对情况的感知。然而,现代社会给人类带来了大量的视觉信息,这在时间敏感和任务关键的情况下是有问题的,比如应急管理和灾难响应。更高效的搜索和检索系统解决了其中的一些问题,这就是为什么许多人寻求开发和扩展基于内容的图像检索(CBIR)技术,以更自主的方式支持态势感知。然而,目前还没有足够的系统来支持CBIR在动态和传感器丰富的环境中的态势感知。本研究提出了一个可扩展的CBIR框架,通过自动搜索和检索相关图像及其捕获上下文来支持对环境的整体理解。这构成了辅助CBIR,体现在多传感器辅助CBIR系统(MSACS)中。我们设计了MSACS框架,并使用最先进的视觉词包范式实现了MSACS的核心CBIR系统。系统使用GPS标记图像的数据集进行评估,以显示良好的精度和空间相关图像的召回率。定位和搜索Wi-Fi接入点的应用演示了使用该系统改进的态势感知能力。辅助的CBIR可以实现对环境的基于视觉的理解,以减轻信息过载的负担,并增加人类对自主系统的信心。
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Image retrieval for visual understanding in dynamic and sensor rich environments
Vision is vital to decision making, as humans naturally trust their eyes to enhance situation awareness. Yet the modern age has overwhelmed humans with massive amounts of visual information, which is problematic in time sensitive and mission critical situations, such as emergency management and disaster response. More efficient search and retrieval systems address some of these issues, which is why many seek to develop and extend Content Based Image Retrieval (CBIR) techniques to support situational awareness in a more autonomous fashion. However, there is currently no adequate system for CBIR to support situational awareness in dynamic and sensor rich environments. This research proposes an extensible framework for CBIR to support a holistic understanding of the environment through the automated search and retrieval of relevant images and the context of their capture. This constitutes assisted CBIR as embodied in the multi-sensor assisted CBIR system (MSACS). We design the MSACS framework and implement the core CBIR system of MSACS using the state of the art Bag of Visual Words paradigm. The system is evaluated using a dataset of GPS tagged images to show favorable precision and recall of spatially related images. Applications for localization and search for Wi-Fi access points demonstrate improved situational awareness using the system. Assisted CBIR could enable vision based understanding of an environment to ease the burdens of information overload and increase human confidence in autonomous systems.
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