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Dockerface: an Easy to Install and Use Faster R-CNN Face Detector in a Docker Container

Dockerface is a highly accurate, pre-trained Faster R-CNN face detector packaged in a Docker container, simplifying installation and use for researchers in various fields.

Year
2017
Venue
arXiv 2017
Authors
2
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arxiv.org/abs/1708.04370v2ARXIV-DEFAULT
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Abstract

Face detection is a very important task and a necessary pre-processing step for many applications such as facial landmark detection, pose estimation, sentiment analysis and face recognition. Not only is face detection an important pre-processing step in computer vision applications but also in computational psychology, behavioral imaging and other fields where researchers might not be initiated in computer vision frameworks and state-of-the-art detection applications. A large part of existing research that includes face detection as a pre-processing step uses existing out-of-the-box detectors such as the HoG-based dlib and the OpenCV Haar face detector which are no longer state-of-the-art - they are primarily used because of their ease of use and accessibility. We introduce Dockerface, a very accurate Faster R-CNN face detector in a Docker container which requires no training and is easy to install and use.

Authors

2