2022
DOI: 10.48550/arxiv.2205.00147
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Operational Adaptation of DNN Classifiers using Elastic Weight Consolidation

Abstract: Autonomous systems (AS) often use Deep Neural Network (DNN) classifiers to allow them to operate in complex, high dimensional, non-linear, and dynamically changing environments. Due to the complexity of these environments, DNN classifiers may output misclassifications as they experience tasks in their operational environments, that were not identified during development. Removing a system from operation and retraining it to include these new tasks becomes economically infeasible as the number of such ASs incre… Show more

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