opencv/samples/dnn
Zihao Mu cb8f1dca3b
Merge pull request #22808 from zihaomu:nanotrack
[teset data in opencv_extra](https://github.com/opencv/opencv_extra/pull/1016)

NanoTrack is an extremely lightweight and fast object-tracking model. 
The total size is **1.1 MB**.
And the FPS on M1 chip is **150**, on Raspberry Pi 4 is about **30**. (Float32 CPU only)

With this model, many users can run object tracking on the edge device.

The author of NanoTrack is @HonglinChu.
The original repo is https://github.com/HonglinChu/NanoTrack.

### Pull Request Readiness Checklist

See details at https://github.com/opencv/opencv/wiki/How_to_contribute#making-a-good-pull-request

- [x] I agree to contribute to the project under Apache 2 License.
- [x] To the best of my knowledge, the proposed patch is not based on a code under GPL or another license that is incompatible with OpenCV
- [x] The PR is proposed to the proper branch
- [ ] There is a reference to the original bug report and related work
- [ ] There is accuracy test, performance test and test data in opencv_extra repository, if applicable
      Patch to opencv_extra has the same branch name.
- [ ] The feature is well documented and sample code can be built with the project CMake
2022-12-06 08:54:32 +03:00
..
dnn_model_runner/dnn_conversion Merge pull request #20290 from wjj19950828:add_paddle_humanseg_demo 2021-09-27 21:59:09 +00:00
face_detector Merge pull request #18591 from sl-sergei:download_utilities 2020-12-11 10:15:32 +00:00
results Merge pull request #20422 from fengyuentau:dnn_face 2021-10-08 19:13:49 +00:00
.gitignore Merge pull request #18591 from sl-sergei:download_utilities 2020-12-11 10:15:32 +00:00
action_recognition.py Merge pull request #14627 from l-bat:demo_kinetics 2019-05-30 17:36:00 +03:00
classification.cpp Merge pull request #20406 from MarkGHX:gsoc_2021_webnn 2021-11-23 21:15:31 +00:00
classification.py Merge pull request #20175 from rogday:dnn_samples_cuda 2021-06-01 14:00:51 +00:00
CMakeLists.txt Merge pull request #20422 from fengyuentau:dnn_face 2021-10-08 19:13:49 +00:00
colorization.cpp dnn: update links for the colorization samples 2021-07-09 13:21:44 +02:00
colorization.py dnn: update links for the colorization samples 2021-07-09 13:21:44 +02:00
common.hpp Merge remote-tracking branch 'upstream/3.4' into merge-3.4 2018-10-26 17:56:55 +03:00
common.py samples: use findFile() in dnn 2018-11-16 18:08:22 +00:00
custom_layers.hpp Merge pull request #12264 from dkurt:dnn_remove_forward_method 2018-09-06 13:26:47 +03:00
dasiamrpn_tracker.cpp Merge pull request #20175 from rogday:dnn_samples_cuda 2021-06-01 14:00:51 +00:00
download_models.py Merge pull request #18591 from sl-sergei:download_utilities 2020-12-11 10:15:32 +00:00
edge_detection.py Fix edge_detection.py sample for Python 3 2019-01-09 15:28:10 +03:00
face_detect.cpp Update documentation 2022-01-10 18:34:39 +03:00
face_detect.py Update documentation 2022-01-10 18:34:39 +03:00
fast_neural_style.py fix pylint warnings 2019-10-16 18:49:33 +03:00
human_parsing.cpp Merge pull request #20175 from rogday:dnn_samples_cuda 2021-06-01 14:00:51 +00:00
human_parsing.py Merge pull request #20175 from rogday:dnn_samples_cuda 2021-06-01 14:00:51 +00:00
js_face_recognition.html fix 4.x links 2021-12-22 13:24:30 +00:00
mask_rcnn.py Merge pull request #17394 from huningxin:fix_segmentation_py 2020-05-27 11:20:07 +03:00
mobilenet_ssd_accuracy.py fix pylint warnings 2019-10-16 18:49:33 +03:00
models.yml ADD weights yolov4 in models.yml 2022-09-05 18:22:01 -03:00
nanotrack_tracker.cpp Merge pull request #22808 from zihaomu:nanotrack 2022-12-06 08:54:32 +03:00
object_detection.cpp samples: fix build without threading support 2021-10-19 13:35:09 +00:00
object_detection.py Merge pull request #20175 from rogday:dnn_samples_cuda 2021-06-01 14:00:51 +00:00
openpose.cpp fix 4.x links 2021-12-22 13:24:30 +00:00
openpose.py samples/dnn: better errormsg in openpose.py 2021-05-05 10:39:12 +02:00
optical_flow.py support flownet2 with arbitary input size 2020-08-12 00:50:58 +08:00
person_reid.cpp Merge pull request #20175 from rogday:dnn_samples_cuda 2021-06-01 14:00:51 +00:00
person_reid.py Merge pull request #20175 from rogday:dnn_samples_cuda 2021-06-01 14:00:51 +00:00
README.md fix 4.x links 2021-12-22 13:24:30 +00:00
scene_text_detection.cpp samples: replace regex 2020-12-05 12:50:37 +00:00
scene_text_recognition.cpp Merge pull request #17570 from HannibalAPE:text_det_recog_demo 2020-12-03 18:47:40 +00:00
scene_text_spotting.cpp Merge pull request #17570 from HannibalAPE:text_det_recog_demo 2020-12-03 18:47:40 +00:00
segmentation.cpp Merge pull request #20175 from rogday:dnn_samples_cuda 2021-06-01 14:00:51 +00:00
segmentation.py Merge pull request #20175 from rogday:dnn_samples_cuda 2021-06-01 14:00:51 +00:00
shrink_tf_graph_weights.py Text TensorFlow graphs parsing. MobileNet-SSD for 90 classes. 2017-10-08 22:25:29 +03:00
siamrpnpp.py Merge remote-tracking branch 'upstream/3.4' into merge-3.4 2021-11-27 16:50:55 +00:00
speech_recognition.cpp dnn: fix various dnn related typos 2022-03-23 18:12:12 -04:00
speech_recognition.py dnn: fix various dnn related typos 2022-03-23 18:12:12 -04:00
text_detection.cpp Merge pull request #17570 from HannibalAPE:text_det_recog_demo 2020-12-03 18:47:40 +00:00
text_detection.py Merge remote-tracking branch 'upstream/3.4' into merge-3.4 2022-02-11 17:32:37 +00:00
tf_text_graph_common.py Merge pull request #19417 from LupusSanctus:am/text_graph_identity 2021-02-17 18:01:41 +00:00
tf_text_graph_efficientdet.py dnn: EfficientDet 2020-05-28 17:23:42 +03:00
tf_text_graph_faster_rcnn.py StridedSlice from TensorFlow 2019-05-22 12:45:52 +03:00
tf_text_graph_mask_rcnn.py Enable ResNet-based Mask-RCNN models from TensorFlow Object Detection API 2019-02-06 13:05:11 +03:00
tf_text_graph_ssd.py Use ==/!= to compare constant literals (str, bytes, int, float, tuple) 2021-11-25 15:39:58 +01:00
virtual_try_on.py Merge pull request #20175 from rogday:dnn_samples_cuda 2021-06-01 14:00:51 +00:00

OpenCV deep learning module samples

Model Zoo

Check a wiki for a list of tested models.

If OpenCV is built with Intel's Inference Engine support you can use Intel's pre-trained models.

There are different preprocessing parameters such mean subtraction or scale factors for different models. You may check the most popular models and their parameters at models.yml configuration file. It might be also used for aliasing samples parameters. In example,

python object_detection.py opencv_fd --model /path/to/caffemodel --config /path/to/prototxt

Check -h option to know which values are used by default:

python object_detection.py opencv_fd -h

Sample models

You can download sample models using download_models.py. For example, the following command will download network weights for OpenCV Face Detector model and store them in FaceDetector folder:

python download_models.py --save_dir FaceDetector opencv_fd

You can use default configuration files adopted for OpenCV from here.

You also can use the script to download necessary files from your code. Assume you have the following code inside your_script.py:

from download_models import downloadFile

filepath1 = downloadFile("https://drive.google.com/uc?export=download&id=0B3gersZ2cHIxRm5PMWRoTkdHdHc", None, filename="MobileNetSSD_deploy.caffemodel", save_dir="save_dir_1")
filepath2 = downloadFile("https://drive.google.com/uc?export=download&id=0B3gersZ2cHIxRm5PMWRoTkdHdHc", "994d30a8afaa9e754d17d2373b2d62a7dfbaaf7a", filename="MobileNetSSD_deploy.caffemodel")
print(filepath1)
print(filepath2)
# Your code

By running the following commands, you will get MobileNetSSD_deploy.caffemodel file:

export OPENCV_DOWNLOAD_DATA_PATH=download_folder
python your_script.py

Note that you can provide a directory using save_dir parameter or via OPENCV_SAVE_DIR environment variable.

Face detection

An origin model with single precision floating point weights has been quantized using TensorFlow framework. To achieve the best accuracy run the model on BGR images resized to 300x300 applying mean subtraction of values (104, 177, 123) for each blue, green and red channels correspondingly.

The following are accuracy metrics obtained using COCO object detection evaluation tool on FDDB dataset (see script) applying resize to 300x300 and keeping an origin images' sizes.

AP - Average Precision                            | FP32/FP16 | UINT8          | FP32/FP16 | UINT8          |
AR - Average Recall                               | 300x300   | 300x300        | any size  | any size       |
--------------------------------------------------|-----------|----------------|-----------|----------------|
AP @[ IoU=0.50:0.95 | area=   all | maxDets=100 ] | 0.408     | 0.408          | 0.378     | 0.328 (-0.050) |
AP @[ IoU=0.50      | area=   all | maxDets=100 ] | 0.849     | 0.849          | 0.797     | 0.790 (-0.007) |
AP @[ IoU=0.75      | area=   all | maxDets=100 ] | 0.251     | 0.251          | 0.208     | 0.140 (-0.068) |
AP @[ IoU=0.50:0.95 | area= small | maxDets=100 ] | 0.050     | 0.051 (+0.001) | 0.107     | 0.070 (-0.037) |
AP @[ IoU=0.50:0.95 | area=medium | maxDets=100 ] | 0.381     | 0.379 (-0.002) | 0.380     | 0.368 (-0.012) |
AP @[ IoU=0.50:0.95 | area= large | maxDets=100 ] | 0.455     | 0.455          | 0.412     | 0.337 (-0.075) |
AR @[ IoU=0.50:0.95 | area=   all | maxDets=  1 ] | 0.299     | 0.299          | 0.279     | 0.246 (-0.033) |
AR @[ IoU=0.50:0.95 | area=   all | maxDets= 10 ] | 0.482     | 0.482          | 0.476     | 0.436 (-0.040) |
AR @[ IoU=0.50:0.95 | area=   all | maxDets=100 ] | 0.496     | 0.496          | 0.491     | 0.451 (-0.040) |
AR @[ IoU=0.50:0.95 | area= small | maxDets=100 ] | 0.189     | 0.193 (+0.004) | 0.284     | 0.232 (-0.052) |
AR @[ IoU=0.50:0.95 | area=medium | maxDets=100 ] | 0.481     | 0.480 (-0.001) | 0.470     | 0.458 (-0.012) |
AR @[ IoU=0.50:0.95 | area= large | maxDets=100 ] | 0.528     | 0.528          | 0.520     | 0.462 (-0.058) |

References