Compute per-image quality metrics and add them as columns to your table. Cross-plot metrics in the Dashboard to find outliers — dark, blurry, or noisy images that degrade training. Especially powerful after a training run: correlate image quality with per-sample loss, false positives, and embeddings to understand why your model struggles on certain images.