Improved Driver Distraction Detection Using Self-Supervised Learning
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Updated
Sep 26, 2024 - Jupyter Notebook
Improved Driver Distraction Detection Using Self-Supervised Learning
A weighted random item sampler (selector), where the probability of selecting an item is proportional to its weight, and every item is sampled exactly once (without repetition or replacement). The sampling method utilizes a binary-search optimization, making it suitable for performance-demanding applications where the set of items is large.
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