In this paper we introduce a new approximation of MLP inference that takes under consideration this residual uncertainty. The proposed algorithm propagates not ...
In this paper we introduce a new approximation of MLP inference that takes under consideration this residual uncertainty. The proposed algorithm propagates not ...
In this paper we introduce a new approximation of MLP inference that takes under consideration this residual uncertainty. The proposed algorithm propagates not ...
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This paper presents an identification method based on artificial neural networks, which can be used for the robust fault detection.
May 5, 2024 · Compared to traditional shallow convolutional neural networks, deeper ResNet based on residual structures(2D) are designed for DOA estimation.
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In this paper we present a Residual Neural Network inspired DL- based Intrusion Detection System (IDS) that incorporates weight pruning to make the model more ...