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 Axera-emd has been converted to run on the Axera NPU using w8a16 quantization. It is primarily used for detecting bicycles, e-bikes, or motorcycles in elevator control applications.
This model is trained to detect the following 2 classes:
Compatible with Pulsar2 version: 5.0.
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 ax_emd_infer.py --model ./AX650/ax_ax650_emd_algo_V1.0.0.axmodel --img test.jpg
root@ax650:/pcd# python3 ax_emd_infer.py --model ./AX650/ax_ax650_emd_algo_V1.0.0.axmodel --img test.jpg
[INFO] Available providers: ['AxEngineExecutionProvider']
[INFO] Using provider: AxEngineExecutionProvider
[INFO] Chip type: ChipType.MC50
[INFO] VNPU type: VNPUType.DISABLED
[INFO] Engine version: 2.10.1s
[INFO] Model type: 2 (triple core)
[INFO] Compiler version: 6.0 79a1e641
Input_name: images, Output_name: ['output0', 'output1']
Preprocess time: 7.52 ms
Inference time: 18.09 ms
Total detect 1 objects
0: e-bike 0.785 [657.0, 321.0, 877.0, 635.0]