Smart Active Sampling to enhance Quality Assurance Efficiency

23 Sep 2022  ·  Clemens Heistracher, Stefan Stricker, Pedro Casas, Daniel Schall, Jana Kemnitz ·

We propose a new sampling strategy, called smart active sapling, for quality inspections outside the production line. Based on the principles of active learning a machine learning model decides which samples are sent to quality inspection. On the one hand, this minimizes the production of scrap parts due to earlier detection of quality violations. On the other hand, quality inspection costs are reduced for smooth operation.

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