Intel presents six main conference papers at CVPR 2023, including novel methods for exploiting the intrinsic characteristics of different heights and for removing the bit selector without any performance loss, as well as a Permutation Straight-Through Estimator (PSTE), a high-quality ‘neural rate-estimator,’ a sparse video-text architecture, and a framework for generating more unbiased scene graphs.
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