STBP computes exact closed-form bounds for the first convolutional layer of spatio-temporal networks and propagates scalable approximations through the rest to certify robustness under subset-frame or patch perturbations.
CoRRabs/2110.14795(2021), https://arxiv.org/abs/2110.14795
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VI-EDL reformulates evidential deep learning via variational inference to derive an ELBO that limits excessive evidence and a generalization bound that justifies setting Dirichlet parameters to e+1.
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Hybrid Robustness Verification for Spatio-Temporal Neural Networks
STBP computes exact closed-form bounds for the first convolutional layer of spatio-temporal networks and propagates scalable approximations through the rest to certify robustness under subset-frame or patch perturbations.