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By Linjie Li (Microsoft) - Advanced Training Strategies for VLP - Diverse Applications of VLP - VL for V/L - Efficiency of VLP models ... [CVPR 2024]: Soften to Defend: Towards Adversarial Robustness via Self-Guided Label Refinement Raghavendra Chalapathy: Data61 CSIRO; Khoa Nguyen: Data61-CSIRO; Sanjay Chawla: QCRI. Authors: Ahmadreza Jeddi, Mohammad Javad Shafiee, Michelle Karg, Christian Scharfenberger, Alexander Wong Description: ... Recent works have shown that interval bound propagation (IBP) can be used to train verifiably [CVPR '23] Revisiting Residual Networks for Adversarial Robustness
So um today we're gonna be uh presenting this paper um uh uh towards Research Talk Jun Zhu, Tsinghua University Although
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