Vision Datasets

Vision datasets are crucial for training and evaluating computer vision models, with current research focusing on improving dataset quality, addressing biases, and developing more robust evaluation metrics beyond simple accuracy. This involves creating new benchmarks for specific tasks like comparative reasoning and video understanding, as well as developing methods to mitigate issues like spurious correlations and human labeling errors. The development of high-quality, diverse, and representative datasets is essential for advancing the field and enabling the deployment of reliable computer vision systems in various applications, from autonomous driving to industrial inspection.

Papers