natanielruiz/dockerface
Face detection using deep learning.
This project helps researchers and developers automatically identify faces in images and videos. You provide your visual media files, and it returns the same files with bounding boxes drawn around detected faces, along with a text file listing the coordinates of each detected face. It's ideal for those working in computer vision, security, or data analysis who need to process large batches of visual data for face occurrences.
191 stars. No commits in the last 6 months.
Use this if you need an easy-to-deploy solution for accurately detecting faces in a collection of images or video footage.
Not ideal if you don't have access to NVIDIA GPUs and the necessary CUDA/cuDNN drivers, as it relies on this specific hardware for performance.
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191
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32
Language
Dockerfile
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Last pushed
Jun 20, 2020
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