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Papers/PyramidBox: A Context-assisted Single Shot Face Detector

PyramidBox: A Context-assisted Single Shot Face Detector

Xu Tang, Daniel K. Du, Zeqiang He, Jingtuo Liu

2018-03-21ECCV 2018 9Face Detection
PaperPDFCodeCodeCodeCode(official)Code

Abstract

Face detection has been well studied for many years and one of remaining challenges is to detect small, blurred and partially occluded faces in uncontrolled environment. This paper proposes a novel context-assisted single shot face detector, named \emph{PyramidBox} to handle the hard face detection problem. Observing the importance of the context, we improve the utilization of contextual information in the following three aspects. First, we design a novel context anchor to supervise high-level contextual feature learning by a semi-supervised method, which we call it PyramidAnchors. Second, we propose the Low-level Feature Pyramid Network to combine adequate high-level context semantic feature and Low-level facial feature together, which also allows the PyramidBox to predict faces of all scales in a single shot. Third, we introduce a context-sensitive structure to increase the capacity of prediction network to improve the final accuracy of output. In addition, we use the method of Data-anchor-sampling to augment the training samples across different scales, which increases the diversity of training data for smaller faces. By exploiting the value of context, PyramidBox achieves superior performance among the state-of-the-art over the two common face detection benchmarks, FDDB and WIDER FACE. Our code is available in PaddlePaddle: \href{https://github.com/PaddlePaddle/models/tree/develop/fluid/face_detection}{\url{https://github.com/PaddlePaddle/models/tree/develop/fluid/face_detection}}.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingWIDER Face (Medium)AP0.946PyramidBox
Facial Recognition and ModellingWIDER Face (Easy)AP0.961PyramidBox
Facial Recognition and ModellingFDDBAP0.987PyramidBox
Facial Recognition and ModellingWIDER Face (Hard)AP0.889PyramidBox
Face DetectionWIDER Face (Medium)AP0.946PyramidBox
Face DetectionWIDER Face (Easy)AP0.961PyramidBox
Face DetectionFDDBAP0.987PyramidBox
Face DetectionWIDER Face (Hard)AP0.889PyramidBox
Face ReconstructionWIDER Face (Medium)AP0.946PyramidBox
Face ReconstructionWIDER Face (Easy)AP0.961PyramidBox
Face ReconstructionFDDBAP0.987PyramidBox
Face ReconstructionWIDER Face (Hard)AP0.889PyramidBox
3DWIDER Face (Medium)AP0.946PyramidBox
3DWIDER Face (Easy)AP0.961PyramidBox
3DFDDBAP0.987PyramidBox
3DWIDER Face (Hard)AP0.889PyramidBox
3D Face ModellingWIDER Face (Medium)AP0.946PyramidBox
3D Face ModellingWIDER Face (Easy)AP0.961PyramidBox
3D Face ModellingFDDBAP0.987PyramidBox
3D Face ModellingWIDER Face (Hard)AP0.889PyramidBox
3D Face ReconstructionWIDER Face (Medium)AP0.946PyramidBox
3D Face ReconstructionWIDER Face (Easy)AP0.961PyramidBox
3D Face ReconstructionFDDBAP0.987PyramidBox
3D Face ReconstructionWIDER Face (Hard)AP0.889PyramidBox

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