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Tracking Tagged Inventory in Unstructured Environments through Probabilistic Dependency Graphs

机译:通过概率依赖图跟踪非结构化环境中的标记库存

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摘要

Logging and tracking raw materials, workpieces and engineered products for seamless and quick pulls is a complex task in the construction and shipbuilding industries due to lack of structured storage solutions. Additional uncertainty is introduced if workpieces are stacked and moved by multiple stakeholders without maintaining an active and up-to-date log of such movements. While there are frameworks proposed to improve workpiece pull times using a variety of tracking modes based on deterministic approaches, there is little discussion of cases wherein direct observations are sparse due to occlusions from stacking and interferences. Our work addresses this problem by: logging visible part locations and timestamps, through a network of custom designed observation devices; and building a graph-based model to identify events that highlight part interactions and estimate stack formation to search for parts that are not directly observable. By augmenting the site workers and equipment with our wearable devices, we avoid adding additional cognitive effort for the workers. Native building blocks of the graph-based model were evaluated through simulations. Experiments were also conducted in an active shipyard to validate our proposed system.
机译:由于缺乏结构的存储解决方案,伐木和跟踪原材料,工件和工程产品用于无缝和快速拉动是施工和造船行业的复杂任务。如果工件堆叠并由多个利益相关者移动,则引入额外的不确定性,而不保持这种运动的主动和最新日志。虽然有框架提出了基于确定性方法的各种跟踪模式改善工件拉动时间,但几乎没有对壳体的讨论,其中由于堆叠和干扰而导致的直接观察稀疏。我们的工作通过以下方式解决了这个问题:通过自定义设计的观察装置的网络记录可见部件位置和时间戳;并构建基于图形的模型,以识别突出显示零件交互和估计堆栈形成以搜索不直接可观察到的部分的事件。通过使用我们的可穿戴设备增强现场工作者和设备,我们避免为工人添加其他认知努力。通过仿真评估基于图形模型的本机结构块。实验还在活跃的造船厂进行,以验证我们所提出的系统。

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