Vision Models
Collection
Common computer vision class models, such as the YOLO family
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18 items
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Updated
This version of YOLOv8-POSE has been converted to run on the Axera NPU using w8a16 quantization.
This model has been optimized with the following LoRA:
Compatible with Pulsar2 version: 3.4
For those who are interested in model conversion, you can try to export axmodel through
The repo of ax-samples, which you can get the how to build the ax_yolov8_pose
The repo of axcl-samples, which you can get the how to build the axcl_yolov8_pose
| Chips | cost |
|---|---|
| AX650 | 10.97 ms |
| AX630C | TBD ms |
Download all files from this repository to the device
root@ax650 ~/yolov8-pose # tree -L 2
.
βββ ax650
β βββ yolov8s-pose.axmodel
βββ ax_aarch64
β βββ ax_yolov8_pose
βββ config.json
βββ football.jpg
βββ README.md
βββ yolov8_pose_config.json
βββ yolov8_pose_out.jpg
βββ yolov8s-pose-cut.onnx
βββ yolov8s-pose.onnx
3 directories, 9 files
root@ax650 ~/yolov8-pose # ./ax_yolov8_pose -m yolov8s-pose.axmodel -i football.jpg
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model file : yolov8s-pose.axmodel
image file : football.jpg
img_h, img_w : 640 640
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Engine creating handle is done.
Engine creating context is done.
Engine get io info is done.
Engine alloc io is done.
Engine push input is done.
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post process cost time:1.24 ms
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Repeat 1 times, avg time 10.97 ms, max_time 10.97 ms, min_time 10.97 ms
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detection num: 4
0: 93%, [ 760, 211, 1125, 1157], person
0: 93%, [1349, 337, 1633, 1039], person
0: 92%, [ 0, 354, 324, 1104], person
0: 88%, [ 489, 474, 656, 996], person
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Base model
Ultralytics/YOLOv8