Monitoring of Human-centric Assembly Operations in Manufacturing by Modeling Assemblies as Spatiotemporal Graphs
Abstract
Process improvement in the manufacturing industry is an iterative exercise. Opti-
mization of assembly operations plays a major role in this regard. Robust and continuous
monitoring of assembly operations can improve the quantity and quality of the finished
product, in addition to assisting in identifying manufacturing defects and irregularities.
However, assembly workers have basic anthropometric differences, such as varying levels
of expertise, personal working style, physical ailments, etc., and the assembly steps vary
in scale and duration. Therefore, developing a robust assembly monitoring system that
caters to individual workers can be challenging. Wireless sensors worn by workers have
been previously used to monitor productivity, but they pose a safety hazard and may
cause discomfort and intrude on privacy, thus affecting their efficiency. Here, computer
vision and deep learning can help overcome these hurdles by developing reliable assembly
monitoring systems and exploiting existing infrastructures, e.g., real-time video capture.
Although Human Activity Recognition and Localization in videos have been studied to a
large extent in the domain of deep learning, the key to effectively monitoring assembly line
operations lies in capturing the temporal and spatial data of the process physics. This
study focused on developing a novel approach where assembly operations are modeled
as spatial and temporal graphs called Spatial-Temporal Graph-based Assembly Monitor-
ing (STGAM). The underlying mechanism behind the assembly operations was better
captured through graphs by effectively modeling long-term spatiotemporal relationships
between the objects and persons associated with an assembly (tools and operators). The
approach was evaluated against two datasets, one from an assembly workstation in in-
dustry and the other from a laboratory. The model outputs were compared with those
obtained from the State Machine Integrated Recognition and Localization (SMIRL) model.
The results show that STGAM showed comparable performance with an F1 score of 86
%, which can be further improved to 92 % based on resource availabilities. This study
ultimately aims to contribute towards using artificial intelligence for real-time monitoring
of human-centric assembly line operations in smart manufacturing.
Subject
Mechanical Engineering
Permanent Link
http://digital.library.wisc.edu/1793/85279Type
Thesis

