Paper: https://talhassner.github.io/home/publication/2015_CVPR
Special made for a bare Raspberry Pi 4, see Q-engineering deep learning examples
RPi 4 64-OS 1950 MHz
FPS = 1/(0.2 * Faces + 0.157)
To run the application, you have to:
- A raspberry Pi 4 64-bit operating system. It can be the Raspberry 64-bit OS, or Ubuntu 18.04 / 20.04. Install 64-bit OS
- OpenCV 64 bit installed. Install OpenCV 4.5
- Code::Blocks installed. (
$ sudo apt-get install codeblocks
)
To extract and run the network in Code::Blocks
$ mkdir MyDir
$ cd MyDir
$ wget https://github.com/Qengineering/Age-Gender-OpenCV-Raspberry-Pi-4/archive/refs/heads/main.zip
$ unzip -j master.zip
Remove master.zip, LICENSE and README.md as they are no longer needed.
$ rm master.zip
$ rm LICENSE
$ rm README.md
Your MyDir folder must now look like this:
sample1.jpg
sample3.jpg
AgeGender.cpb
AgeGender.cpp
opencv_face_detector.pbtxt
opencv_face_detector_uint8.pb
gender_deploy.prototxt
age_deploy.prototxt
Do not forget to download the caffe models!
Download age_deploy.caffemodel
Download gender_deploy.caffemodel
To run the application load the project file YoloV5.cbp in Code::Blocks.
Next, follow the instructions at Hands-On.
Many thanks to GilLevi
TensorFlow implementation dpressel