Vision Analysis
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YOLOv5xu

yolov5uComing Soon

one-stage detector with CSPDarknet backbone

Parameters97.2M
GFLOPs246.4
Input Size640px
Best mAP52.3%
Licensenon-permissive

Architecture

Type

one-stage

Backbone

CSPDarknet

Neck

PAFPN

Head

Anchor-Free Decoupled

Benchmark Results

Performance on COCO val2017 across different hardware configurations

HardwareRuntimemAP@50-95FPSLatencyVRAM
NVIDIA Jetson Orin Nano Super 8GBONNX Runtime FP3252.3%0.52179.7ms-
NVIDIA Jetson Orin Nano Super 8GBPyTorch FP3252.3%5.0200.2ms449 MB
NVIDIA Jetson Orin Nano Super 8GBTensorRT FP1652.3%14.768.1ms14 MB
Raspberry Pi 5ncnn FP3252.3%1.0977.7ms-
Raspberry Pi 5ONNX Runtime FP3252.3%0.32837.2ms-
Raspberry Pi 5PyTorch FP3252.3%0.42484.4ms-

Speed Breakdown(NVIDIA Jetson Orin Nano Super 8GB)

6.3ms
2158.1ms
9.3ms
Preprocess
Inference
Postprocess (NMS)
anchor-freenmsPaper: 53.2% mAP

Related Models (yolov5u)

Run any model with one line

LibreYOLO has the best catalogue of state-of-the-art detectors, all behind one MIT-licensed Python API.

from libreyolo import LibreYOLO, SAMPLE_IMAGE

# LibreYOLO has the best catalogue of state-of-the-art models.
model = LibreYOLO("LibreRFDETRl.pt")           # RF-DETR-L (transformer flagship)
results = model(SAMPLE_IMAGE, save=True)        # run inference, save the annotated image

# Swap in any other model, same one-line API (weights auto-download):
#   LibreYOLO("LibreYOLO9c.pt")      # YOLO9-C
#   LibreYOLO("LibreYOLOXx.pt")      # YOLOX-X
#   LibreYOLO("LibreDFINEx.pt")      # D-FINE-X
#   LibreYOLO("LibreRTDETRr50.pt")   # RT-DETR-R50