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MTCNN-Tensorflow

This is a tensorflow implementation of MTCNN for both training and testing.

This repo is fork from wangbm/MTCNN-Tensorflow. And I base on the repo to restruct MTCNN to reach my goal, a cpu(Qualcomm 820) real-time detector. You can read the original README here.

Requirement

No Virtual Environments

  1. Ubuntu 14.04 or 16.04 or Mac 10.*
  2. tensorflow 1.3 && python3.6: https://github.com/tensorflow/tensorflow
  3. opencv 3.0 for python3.6 pip install opencv-python
  4. numpy 1.13 pip install numpy

Anaconda Environment

  1. Ubuntu 14.04 or 16.04

Prepare Data

notice: You should be at ROOT_DIR/prepare_data/ if you want to run the following command.

  • Step1. Download Wider Face Training part only from Official Website and unzip to replace WIDER_train
  • Step2. Run python gen_shuffle_data.py 12 to generate 12net training data. Besides, python gen_tfdata_12net.py provide you an example to build tfrecords file. Remember changing and adding necessary params.
  • Step3. Run python tf_gen_12net_hard_example.py to generate hard sample. Run python gen_shuffle_data.py 24 to generate random cropped training data. Then run python gen_tfdata_24net.py to combine these output and generate tfrecords file.
  • Step4. Similar to last step. Run python gen_24net_hard_example.py to generate hard sample. Run python gen_shuffle_data.py 48 to generate random cropped training data. Then run python gen_tfdata_48net.py to combine these output and generate tfrecords file.

Training Example

notice: You should be at ROOT_DIR/ if you want to run the following command.

if you have finished step 2 above, you can run python src/mtcnn_pnet_test.py to do Pnet training. Similarly, after step 3 or step 4, you can run python src/mtcnn_rnet_test.py or python src/mtcnn_onet_test.py to train Rnet and Onet respectively.

Testing Example

notice: You should be at ROOT_DIR/ if you want to run the following command.

You can run python test_img.py YOUR_IMAGE_PATH --model_dir ./save_model/all_in_one/ to test mtcnn with the provided model. You can also provide your own training model directory to do the test. If there are multiple models in the directory, the program will automatically choose the model with the maximum iterations.

Results

test1.jpg test2.jpg

Reference

[1] MTCNN paper link: Joint Face Detection and Alignment using Multi-task Cascaded Convolutional Networks

[2] MTCNN official code: MTCNN with Caffe