Spaces:
Runtime error
Runtime error
# ByteTrack-CPP-ncnn | |
## Installation | |
Clone [ncnn](https://github.com/Tencent/ncnn) first, then please following [build tutorial of ncnn](https://github.com/Tencent/ncnn/wiki/how-to-build) to build on your own device. | |
Install eigen-3.3.9 [[google]](https://drive.google.com/file/d/1rqO74CYCNrmRAg8Rra0JP3yZtJ-rfket/view?usp=sharing), [[baidu(code:ueq4)]](https://pan.baidu.com/s/15kEfCxpy-T7tz60msxxExg). | |
```shell | |
unzip eigen-3.3.9.zip | |
cd eigen-3.3.9 | |
mkdir build | |
cd build | |
cmake .. | |
sudo make install | |
``` | |
## Generate onnx file | |
Use provided tools to generate onnx file. | |
For example, if you want to generate onnx file of bytetrack_s_mot17.pth, please run the following command: | |
```shell | |
cd <ByteTrack_HOME> | |
python3 tools/export_onnx.py -f exps/example/mot/yolox_s_mix_det.py -c pretrained/bytetrack_s_mot17.pth.tar | |
``` | |
Then, a bytetrack_s.onnx file is generated under <ByteTrack_HOME>. | |
## Generate ncnn param and bin file | |
Put bytetrack_s.onnx under ncnn/build/tools/onnx and then run: | |
```shell | |
cd ncnn/build/tools/onnx | |
./onnx2ncnn bytetrack_s.onnx bytetrack_s.param bytetrack_s.bin | |
``` | |
Since Focus module is not supported in ncnn. Warnings like: | |
```shell | |
Unsupported slice step ! | |
``` | |
will be printed. However, don't worry! C++ version of Focus layer is already implemented in src/bytetrack.cpp. | |
## Modify param file | |
Open **bytetrack_s.param**, and modify it. | |
Before (just an example): | |
``` | |
235 268 | |
Input images 0 1 images | |
Split splitncnn_input0 1 4 images images_splitncnn_0 images_splitncnn_1 images_splitncnn_2 images_splitncnn_3 | |
Crop Slice_4 1 1 images_splitncnn_3 467 -23309=1,0 -23310=1,2147483647 -23311=1,1 | |
Crop Slice_9 1 1 467 472 -23309=1,0 -23310=1,2147483647 -23311=1,2 | |
Crop Slice_14 1 1 images_splitncnn_2 477 -23309=1,0 -23310=1,2147483647 -23311=1,1 | |
Crop Slice_19 1 1 477 482 -23309=1,1 -23310=1,2147483647 -23311=1,2 | |
Crop Slice_24 1 1 images_splitncnn_1 487 -23309=1,1 -23310=1,2147483647 -23311=1,1 | |
Crop Slice_29 1 1 487 492 -23309=1,0 -23310=1,2147483647 -23311=1,2 | |
Crop Slice_34 1 1 images_splitncnn_0 497 -23309=1,1 -23310=1,2147483647 -23311=1,1 | |
Crop Slice_39 1 1 497 502 -23309=1,1 -23310=1,2147483647 -23311=1,2 | |
Concat Concat_40 4 1 472 492 482 502 503 0=0 | |
... | |
``` | |
* Change first number for 235 to 235 - 9 = 226(since we will remove 10 layers and add 1 layers, total layers number should minus 9). | |
* Then remove 10 lines of code from Split to Concat, but remember the last but 2nd number: 503. | |
* Add YoloV5Focus layer After Input (using previous number 503): | |
``` | |
YoloV5Focus focus 1 1 images 503 | |
``` | |
After(just an exmaple): | |
``` | |
226 328 | |
Input images 0 1 images | |
YoloV5Focus focus 1 1 images 503 | |
... | |
``` | |
## Use ncnn_optimize to generate new param and bin | |
```shell | |
# suppose you are still under ncnn/build/tools/onnx dir. | |
../ncnnoptimize bytetrack_s.param bytetrack_s.bin bytetrack_s_op.param bytetrack_s_op.bin 65536 | |
``` | |
## Copy files and build ByteTrack | |
Copy or move 'src', 'include' folders and 'CMakeLists.txt' file into ncnn/examples. Copy bytetrack_s_op.param, bytetrack_s_op.bin and <ByteTrack_HOME>/videos/palace.mp4 into ncnn/build/examples. Then, build ByteTrack: | |
```shell | |
cd ncnn/build/examples | |
cmake .. | |
make | |
``` | |
## Run the demo | |
You can run the ncnn demo with **5 FPS** (96-core Intel(R) Xeon(R) Platinum 8163 CPU @ 2.50GHz): | |
```shell | |
./bytetrack palace.mp4 | |
``` | |
You can modify 'num_threads' to optimize the running speed in [bytetrack.cpp](https://github.com/ifzhang/ByteTrack/blob/2e9a67895da6b47b948015f6861bba0bacd4e72f/deploy/ncnn/cpp/src/bytetrack.cpp#L309) according to the number of your CPU cores: | |
``` | |
yolox.opt.num_threads = 20; | |
``` | |
## Acknowledgement | |
* [ncnn](https://github.com/Tencent/ncnn) | |