„Neural Network Robustness“
Suchergebnisse
1.000+ Treffer
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A new perspective on memorization in recurrent networks of spiking neurons
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Improving Robustness of Perception DNNs in Various Domains
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Characterizing robustness and sensitivity of convolutional neural networks for quantitative analysis of mitochondrial morphology
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Advancing precision agriculture: domain-specific augmentations and robustness testing for convolutional neural networks in precision spraying evaluation
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Global quantitative robustness of regression feed-forward neural networks
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Exploring adversarial examples and adversarial robustness of convolutional neural networks by mutual information
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Neural network robustness evaluation based on interval analysis
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Learnability and robustness of shallow neural networks learned by a performance-driven BP and a variant of PSO for edge decision-making
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Isometric representations in neural networks improve robustness
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Investigation of robustness of hybrid artificial neural network with artificial bee colony and firefly algorithm in predicting COVID-19 new cases: case study of Iran
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Double Backpropagation with Applications to Robustness and Saliency Map Interpretability – Doppelte Fehler-Rückpropagierung mit Anwendungen zu Robustheit und Interpretierbarkeit der Salienzkarte
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Leveraging stochasticity to increase the robustness of artificial neural networks
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Deep Learning for Robust and Explainable Models in Computer Vision
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Detektion, Quantifikation und Mitigation von Robustheitsanfälligkeiten in Tiefen Neuronalen Netzen
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Adversarial Robustness of Graph Neural Networks
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Advances in Reliably Evaluating and Improving Adversarial Robustness
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Robustness analysis of deep neural networks in the presence of adversarial perturbations and noisy labels
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Efficient Estimation and Exploitation of Predictive Uncertainties in Deep Learning-based Machine Vision
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Safeguarding AI-based autonomous driving against distribution shifts induced by wavefront aberrations of the windshield
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Robustness evaluation on different training state of a CNN model