YOLO-Fun
Collection
一个收集“有趣场景”的 YOLO 检测模型合集。
从日常生活到奇奇怪怪的边缘case,这里放的是那些“没必要但很好玩”的检测任务。
目标是用最轻量的方式,把想法快速变成可用模型。 • 12 items • Updated • 2
Configuration Parsing Warning:Invalid JSON for config file config.json
This version of Cow-axera has been converted to run on the Axera NPU using w8a16 quantization. It is trained to detect cows in the wild.
This model is trained to detect cows with one class:
Compatible with Pulsar2 version: 6.0.
For those who are interested in model conversion, you can try to export axmodel through:
https://docs.m5stack.com/zh_CN/ai_hardware/AI_Pyramid-Pro
Download all files from this repository to the device.
https://github.com/AXERA-TECH/pyaxengine
wget https://github.com/AXERA-TECH/pyaxengine/releases/download/0.1.3.rc2/axengine-0.1.3-py3-none-any.whl
pip install axengine-0.1.3-py3-none-any.whl
run
python3 axmodel_infer_yolov5.py
root@ax650:~/cow-axera# python3 axmodel_infer_cow_yolov5.py
[INFO] Available providers: ['AxEngineExecutionProvider', 'AXCLRTExecutionProvider']
[INFO] Using provider: AxEngineExecutionProvider
[INFO] Chip type: ChipType.MC50
[INFO] VNPU type: VNPUType.DISABLED
[INFO] Engine version: 2.12.0s
[INFO] Model type: 2 (triple core)
[INFO] Compiler version: 6.0 6965315a
class: cow left:356 top:79 right:464 bottom:119 conf: 76%
class: cow left:57 top:109 right:322 bottom:284 conf: 94%
class: cow left:251 top:104 right:550 bottom:355 conf: 95%
Saved res to ./axmodel_res.jpg