-
NanoTrack is a lightweight and high speed tracking network which mainly referring to SiamBAN and LightTrack. It is suitable for deployment on embedded or mobile devices. In fact, it can run at >120FPS on Apple M1 CPU.
-
Experiments show that NanoTrack algorithm has good performance on tracking datasets.
Trackers Backbone ModeSize VOT2018 EAO VOT2019 EAO GOT-10k-Val AO GOT-10k-Val SR DTB70 Success DTB70 Precision NanoTrack MobileNetV3 2.2MB 0.311 0.247 0.604 0.724 0.532 0.727 CVPR2021 LightTrack MobileNetV3 7.7MB 0.418 0.328 0.75 0.877 0.591 0.766 WACV2022 SiamTPN ShuffleNetV2 62.2MB 0.191 0.209 0.728 0.865 0.572 0.728 ICRA2021 SiamAPN AlexNet 118.7MB 0.248 0.235 0.622 0.708 0.585 0.786 IROS2021 SiamAPN++ AlexNet 187MB 0.268 0.234 0.635 0.73 0.594 0.791 -
We provide Android demo and MacOS demo based on ncnn inference framework.
-
We also provide PyTorch code. It is friendly for training with much lower GPU memory cost than other models. NanoTrack only uses GOT-10k dataset to train, which only takes two hours on GPU3090.
-
- Modify your own CMakeList.txt
-
- Build (Apple M1 CPU)
$ sh make_macos_arm64.sh
-
- Modify your own CMakeList.txt
-
- Download(password: 6cdd) OpenCV and NCNN libraries for Android
https://github.com/Tencent/ncnn
https://github.com/Z-Xiong/LightTrack-ncnn
https://github.com/FeiGeChuanShu/ncnn_Android_LightTrack