基于多任务学习和多层特征融合的人脸检测

Yanan Zhang, Hongyu Wang, Fang Xu
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引用次数: 3

摘要

人脸检测和人脸特征定位是人脸识别系统的两个关键部分。通常,这两个链接被视为两个独立的任务,忽略了任务之间的相关性。此外,大多数基于深度卷积神经网络的人脸检测算法只关注图像的高级语义信息,而没有充分利用图像的底层细节。为了进一步提高人脸检测的性能,我们提出了一种基于多任务学习和多层特征融合的人脸检测算法。该方法将人脸分类、人脸特征定位和边界盒回归三个任务整合到一个框架中,充分利用多任务之间的相关性,对多任务进行同步学习。同时,为了充分利用图像的底层细节和高层语义信息,采用了多层特征融合技术。最后,在人脸检测评价数据库FDDB上进行了测试。实验结果表明,该算法具有良好的人脸检测性能。
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Face detection based on multi task learning and multi layer feature fusion
Face detection and facial feature location are two key parts of face recognition system. Usually, these two links are treated as two separate tasks, ignoring the correlation between tasks. In addition, most of the face detection algorithms based on deep convolution neural networks focus only on high-level semantic information of the image, and do not take full advantage of the underlying details of the image. In order to further improve the performance of face detection, we propose a face detection algorithm based on multi task learning and multilayer feature fusion. The proposed method integrates three tasks, namely, face classification, facial feature location, and bounding box regression, into a framework that takes full advantage of the correlation between multiple tasks and performs simultaneous learning over multiple tasks. At the same time, in order to make full use of the low-level details and high-level semantic information of the image, multi layer feature fusion technology is adopted. Finally, we test it on the face detection evaluation database FDDB. Experimental results show that the proposed algorithm has good performance in face detection.
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