TY - JOUR AU1 - Srivastava, Aishwarya AU2 - Aggarwal, Siddhant AU3 - Apon, Amy AU4 - Duffy, Edward AU5 - Kennedy, Ken AU6 - Luckow, Andre AU7 - Posey, Brandon AU8 - Ziolkowski, Marcin AB - We investigate the challenges of building an end‐to‐end cloud pipeline for real‐time intelligent visual inspection system for use in automotive manufacturing. Current methods of visual detection in automotive assembly are highly labor intensive, and thus prone to errors. An automated process is sought that can operate within the real‐time constraints of the assembly line and can reduce errors. Components of the cloud pipeline include capture of a large set of high‐definition images from a camera setup at the assembly location, transfer and storage of the images as needed, execution of object detection, and notification to a human operator when a fault is detected. The end‐to‐end execution must complete within a fixed time frame before the next car arrives in the assembly line. In this article, we report the design, development, and experimental evaluation of the tradeoffs of performance, accuracy, and scalability for a cloud system. TI - Deployment of a cloud pipeline for real‐time visual inspection using fast streaming high‐definition images JF - Software: Practice and Experience DO - 10.1002/spe.2816 DA - 2020-06-01 UR - https://www.deepdyve.com/lp/wiley/deployment-of-a-cloud-pipeline-for-real-time-visual-inspection-using-Do6YzLl9KY SP - 868 EP - 898 VL - 50 IS - 6 DP - DeepDyve ER -