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Deep learning applications for quality control in particle detector construction

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arxiv 2203.08969 v1 pith:E72WASVF submitted 2022-03-16 hep-ex

Deep learning applications for quality control in particle detector construction

classification hep-ex
keywords qualityconstructioncontroldetectordetectorsapplicationscomputerdeep
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The growing complexity of particle detectors makes their construction and quality control a new challenge. We present studies that explore the use of deep learning-based computer vision techniques to perform quality checks of detector components and assembly steps, which will automate procedures and minimize the need for human interventions. This study focuses on the construction steps of a silicon detector, which involve forming a mechanical structure with the sensor and wire bonding individual cells to electronics for reading out signals. Silicon detectors in high energy physics experiments today have millions of channels. Manual quality control of these and other high channel-density detectors requires enormous amounts of labor and can be prone to errors. Here, we explore computer vision applications to either augment or fully replace visual inspections done by humans. We investigated convolutional neural networks for image classification and autoencoders for anomalies detection. Two proof-of-concept studies will be presented.

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