Super fast and high accuracy lightweight anchor-free object detection model. Real-time on mobile devices.
- ā”Super lightweight: Model file is only 980KB(INT8) or 1.8MB(FP16).
- ā”Super fast: 97fps(10.23ms) on mobile ARM CPU.
- šHigh accuracy: Up to 34.3 mAPval@0.5:0.95 and still realtime on CPU.
- š¤Training friendly: Much lower GPU memory cost than other models. Batch-size=80 is available on GTX1060 6G.
- šEasy to deploy: Support various backends including ncnn, MNN and OpenVINO. Also provide Android demo based on ncnn inference framework.
NanoDet is a FCOS-style one-stage anchor-free object detection model which using Generalized Focal Loss as classification and regression loss.
In NanoDet-Plus, we propose a novel label assignment strategy with a simple assign guidance module (AGM) and a dynamic soft label assigner (DSLA) to solve the optimal label assignment problem in lightweight model training. We also introduce a light feature pyramid called Ghost-PAN to enhance multi-layer feature fusion. These improvements boost previous NanoDet's detection accuracy by 7 mAP on COCO dataset.
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Model | Resolution | mAPval 0.5:0.95 |
CPU Latency (i7-8700) |
ARM Latency (4xA76) |
FLOPS | Params | Model Size |
---|---|---|---|---|---|---|---|
NanoDet-m | 320*320 | 20.6 | 4.98ms | 10.23ms | 0.72G | 0.95M | 1.8MB(FP16) | 980KB(INT8) |
NanoDet-Plus-m | 320*320 | 27.0 | 5.25ms | 11.97ms | 0.9G | 1.17M | 2.3MB(FP16) | 1.2MB(INT8) |
NanoDet-Plus-m | 416*416 | 30.4 | 8.32ms | 19.77ms | 1.52G | 1.17M | 2.3MB(FP16) | 1.2MB(INT8) |
NanoDet-Plus-m-1.5x | 320*320 | 29.9 | 7.21ms | 15.90ms | 1.75G | 2.44M | 4.7MB(FP16) | 2.3MB(INT8) |
NanoDet-Plus-m-1.5x | 416*416 | 34.1 | 11.50ms | 25.49ms | 2.97G | 2.44M | 4.7MB(FP16) | 2.3MB(INT8) |
YOLOv3-Tiny | 416*416 | 16.6 | - | 37.6ms | 5.62G | 8.86M | 33.7MB |
YOLOv4-Tiny | 416*416 | 21.7 | - | 32.81ms | 6.96G | 6.06M | 23.0MB |
YOLOX-Nano | 416*416 | 25.8 | - | 23.08ms | 1.08G | 0.91M | 1.8MB(FP16) |
YOLOv5-n | 640*640 | 28.4 | - | 44.39ms | 4.5G | 1.9M | 3.8MB(FP16) |
FBNetV5 | 320*640 | 30.4 | - | - | 1.8G | - | - |
MobileDet | 320*320 | 25.6 | - | - | 0.9G | - | - |
Download pre-trained models and find more models in Model Zoo or in Release Files
Notes (click to expand)
-
ARM Performance is measured on Kirin 980(4xA76+4xA55) ARM CPU based on ncnn. You can test latency on your phone with ncnn_android_benchmark.
-
Intel CPU Performance is measured Intel Core-i7-8700 based on OpenVINO.
-
NanoDet mAP(0.5:0.95) is validated on COCO val2017 dataset with no testing time augmentation.
-
YOLOv3&YOLOv4 mAP refers from Scaled-YOLOv4: Scaling Cross Stage Partial Network.
- [2021.12.25] NanoDet-Plus release! Adding AGM(Assign Guidance Module) & DSLA(Dynamic Soft Label Assigner) to improve 7 mAP with only a little cost.
Find more update notes in Update notes.
Android demo project is in demo_android_ncnn folder. Please refer to Android demo guide.
Here is a better implementation š ncnn-android-nanodet
C++ demo based on ncnn is in demo_ncnn folder. Please refer to Cpp demo guide.
Inference using Alibaba's MNN framework is in demo_mnn folder. Please refer to MNN demo guide.
Inference using OpenVINO is in demo_openvino folder. Please refer to OpenVINO demo guide.
https://nihui.github.io/ncnn-webassembly-nanodet/
First, install requirements and setup NanoDet following installation guide. Then download COCO pretrain weight from here
The pre-trained weight was trained by the config config/nanodet-plus-m_416.yml
.
- Inference images
python demo/demo.py image --config CONFIG_PATH --model MODEL_PATH --path IMAGE_PATH
- Inference video
python demo/demo.py video --config CONFIG_PATH --model MODEL_PATH --path VIDEO_PATH
- Inference webcam
python demo/demo.py webcam --config CONFIG_PATH --model MODEL_PATH --camid YOUR_CAMERA_ID
Besides, We provide a notebook here to demonstrate how to make it work with PyTorch.
- Linux or MacOS
- CUDA >= 10.0
- Python >= 3.6
- Pytorch >= 1.7
- experimental support Windows (Notice: Windows not support distributed training before pytorch1.7)
- Create a conda virtual environment and then activate it.
conda create -n nanodet python=3.8 -y
conda activate nanodet
- Install pytorch
conda install pytorch torchvision cudatoolkit=11.1 -c pytorch -c conda-forge
- Clone this repository
git clone https://github.com/RangiLyu/nanodet.git
cd nanodet
- Install requirements
pip install -r requirements.txt
- Setup NanoDet
python setup.py develop
NanoDet supports variety of backbones. Go to the config folder to see the sample training config files.
Model | Backbone | Resolution | COCO mAP | FLOPS | Params | Pre-train weight |
---|---|---|---|---|---|---|
NanoDet-m | ShuffleNetV2 1.0x | 320*320 | 20.6 | 0.72G | 0.95M | Download |
NanoDet-Plus-m-320 (NEW) | ShuffleNetV2 1.0x | 320*320 | 27.0 | 0.9G | 1.17M | Weight | Checkpoint |
NanoDet-Plus-m-416 (NEW) | ShuffleNetV2 1.0x | 416*416 | 30.4 | 1.52G | 1.17M | Weight | Checkpoint |
NanoDet-Plus-m-1.5x-320 (NEW) | ShuffleNetV2 1.5x | 320*320 | 29.9 | 1.75G | 2.44M | Weight | Checkpoint |
NanoDet-Plus-m-1.5x-416 (NEW) | ShuffleNetV2 1.5x | 416*416 | 34.1 | 2.97G | 2.44M | Weight | Checkpoint |
Notice: The difference between Weight
and Checkpoint
is the weight only provide params in inference time, but the checkpoint contains training time params.
Legacy Model Zoo
Model | Backbone | Resolution | COCO mAP | FLOPS | Params | Pre-train weight |
---|---|---|---|---|---|---|
NanoDet-m-416 | ShuffleNetV2 1.0x | 416*416 | 23.5 | 1.2G | 0.95M | Download |
NanoDet-m-1.5x | ShuffleNetV2 1.5x | 320*320 | 23.5 | 1.44G | 2.08M | Download |
NanoDet-m-1.5x-416 | ShuffleNetV2 1.5x | 416*416 | 26.8 | 2.42G | 2.08M | Download |
NanoDet-m-0.5x | ShuffleNetV2 0.5x | 320*320 | 13.5 | 0.3G | 0.28M | Download |
NanoDet-t | ShuffleNetV2 1.0x | 320*320 | 21.7 | 0.96G | 1.36M | Download |
NanoDet-g | Custom CSP Net | 416*416 | 22.9 | 4.2G | 3.81M | Download |
NanoDet-EfficientLite | EfficientNet-Lite0 | 320*320 | 24.7 | 1.72G | 3.11M | Download |
NanoDet-EfficientLite | EfficientNet-Lite1 | 416*416 | 30.3 | 4.06G | 4.01M | Download |
NanoDet-EfficientLite | EfficientNet-Lite2 | 512*512 | 32.6 | 7.12G | 4.71M | Download |
NanoDet-RepVGG | RepVGG-A0 | 416*416 | 27.8 | 11.3G | 6.75M | Download |
-
Prepare dataset
If your dataset annotations are pascal voc xml format, refer to config/nanodet_custom_xml_dataset.yml
Or convert your dataset annotations to MS COCO format(COCO annotation format details).
-
Prepare config file
Copy and modify an example yml config file in config/ folder.
Change save_path to where you want to save model.
Change num_classes in model->arch->head.
Change image path and annotation path in both data->train and data->val.
Set gpu ids, num workers and batch size in device to fit your device.
Set total_epochs, lr and lr_schedule according to your dataset and batchsize.
If you want to modify network, data augmentation or other things, please refer to Config File Detail
-
Start training
NanoDet is now using pytorch lightning for training.
For both single-GPU or multiple-GPUs, run:
python tools/train.py CONFIG_FILE_PATH
-
Visualize Logs
TensorBoard logs are saved in
save_dir
which you set in config file.To visualize tensorboard logs, run:
cd <YOUR_SAVE_DIR> tensorboard --logdir ./
NanoDet provide multi-backend C++ demo including ncnn, OpenVINO and MNN. There is also an Android demo based on ncnn library.
To convert NanoDet pytorch model to ncnn, you can choose this way: pytorch->onnx->ncnn
To export onnx model, run tools/export_onnx.py
.
python tools/export_onnx.py --cfg_path ${CONFIG_PATH} --model_path ${PYTORCH_MODEL_PATH}
Please refer to demo_ncnn.
Please refer to demo_openvino.
Please refer to demo_mnn.
Please refer to android_demo.
If you find this project useful in your research, please consider cite:
@misc{=nanodet,
title={NanoDet-Plus: Super fast and high accuracy lightweight anchor-free object detection model.},
author={RangiLyu},
howpublished = {\url{https://github.com/RangiLyu/nanodet}},
year={2021}
}
https://github.com/Tencent/ncnn
https://github.com/open-mmlab/mmdetection
https://github.com/implus/GFocal