--- description: Explore Ultralytics YOLO metrics tools - from confusion matrix, detection metrics, pose metrics to box IOU. Learn how to compute and plot precision-recall curves. keywords: Ultralytics, YOLO, YOLOv3, YOLOv4, metrics, confusion matrix, detection metrics, pose metrics, box IOU, mask IOU, plot precision-recall curves, compute average precision --- # Reference for `ultralytics/utils/metrics.py` !!! note Full source code for this file is available at [https://github.com/ultralytics/ultralytics/blob/main/ultralytics/utils/metrics.py](https://github.com/ultralytics/ultralytics/blob/main/ultralytics/utils/metrics.py). --- ## ::: ultralytics.utils.metrics.ConfusionMatrix

--- ## ::: ultralytics.utils.metrics.Metric

--- ## ::: ultralytics.utils.metrics.DetMetrics

--- ## ::: ultralytics.utils.metrics.SegmentMetrics

--- ## ::: ultralytics.utils.metrics.PoseMetrics

--- ## ::: ultralytics.utils.metrics.ClassifyMetrics

--- ## ::: ultralytics.utils.metrics.box_area

--- ## ::: ultralytics.utils.metrics.bbox_ioa

--- ## ::: ultralytics.utils.metrics.box_iou

--- ## ::: ultralytics.utils.metrics.bbox_iou

--- ## ::: ultralytics.utils.metrics.mask_iou

--- ## ::: ultralytics.utils.metrics.kpt_iou

--- ## ::: ultralytics.utils.metrics.smooth_BCE

--- ## ::: ultralytics.utils.metrics.smooth

--- ## ::: ultralytics.utils.metrics.plot_pr_curve

--- ## ::: ultralytics.utils.metrics.plot_mc_curve

--- ## ::: ultralytics.utils.metrics.compute_ap

--- ## ::: ultralytics.utils.metrics.ap_per_class