FCHD Fully Convolutional Head Detector Save

Code for FCHD - A fast and accurate head detector

Project README

FCHD-Fully-Convolutional-Head-Detector

Code for FCHD - A fast and accurate head detector

This is the code for FCHD - A Fast and accurate head detector. See the paper for details and video for demo.

Dependencies

  • The code is tested on Ubuntu 16.04.

  • install PyTorch >=0.4 with GPU (code are GPU-only), refer to official website

  • install cupy, you can install via pip install cupy-cuda80 or(cupy-cuda90,cupy-cuda91, etc).

  • install visdom for visualization, refer to their github page

Installation

  1. Install Pytorch

  2. Clone this repository

git clone https://github.com/aditya-vora/FCHD-Fully-Convolutional-Head-Detector
  1. Build cython code for speed:
cd src/nms/
python build.py build_ext --inplace

Training

  1. Download the caffe pre-trained VGG16 from the following link. Store this pre-trained model in data/pretrained_model folder. The filename is vgg16_caffe.pth.

  2. Download the BRAINWASH dataset from the official website. Unzip it and store the dataset in the data/ folder.

  3. Make appropriate settings in src/config.py file regarding the updated paths.

  4. Start visdom server for visualization:

python -m visdom.server
  1. Run the following command to train the model: python train.py .

Demo

  1. Download the best performing model from the following link. The filename is head_detector_final.

  2. Store the head detection model in checkpoints/ folder.

  3. Run the following python command from the root folder.

python head_detection_demo.py --img_path <test_image_name> --model_path <model_path>

Results

Method AP
Overfeat - AlexNet [1] 0.62
ReInspect, Lfix [1] 0.60
ReInspect, Lfirstk [1] 0.63
ReInspect, Lhungarian [1] 0.78
Ours 0.70

Runtime

  • Runs at 5fps on NVidia Quadro M1000M GPU with 512 CUDA cores.

Acknowledgement

This work builds on many of the excellent works:

Reference

[1] Stewart, Russell, Mykhaylo Andriluka, and Andrew Y. Ng. "End-to-end people detection in crowded scenes." Proceedings of the IEEE conference on computer vision and pattern recognition. 2016.

Open Source Agenda is not affiliated with "FCHD Fully Convolutional Head Detector" Project. README Source: aditya-vora/FCHD-Fully-Convolutional-Head-Detector

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