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Face Detection in a Complex Background Using Cascaded Conventional Networks

机译:使用级联传统网络在复杂背景中的脸部检测

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Although significant achievements have been achieved in the field of face detection recently, face detection under complex background is still a challenge issue. Especially, face detection has wide applications in real life, such as face recognition attendance system and crowd size estimation. In this paper, we propose a novel cascaded framework to tackle the challenges based on: blur, illumination, pose, expression and occlusion. Our framework adopt the localization of facial landmarks to boost up their performance. In addition, our detector extracts features from different layers of a deep residual network for complementary information of low-dimensional and high-dimensional features. Our method achieves notable results over the state-of-the-art techniques on the challenging WIDER FACE benchmark for face detection and our results show that average precision of 89.2%. Importantly, we demonstrate superior performance and robustness in a challenging environment.
机译:虽然最近脸部检测领域已经实现了显着成果,但在复杂背景下的面部检测仍然是一个挑战问题。特别是,面部检测在现实生活中具有广泛的应用,例如面部识别出勤系统和人群尺寸估计。在本文中,我们提出了一种小型级联框架,基于以下方式解决挑战:模糊,照明,姿势,表达和闭塞。我们的框架采用了面部地标的本地化,提高了他们的表现。此外,我们的检测器提取来自不同层的不同层的深度剩余网络的特征,用于低维和高维特征的互补信息。我们的方法在面对脸部检测的具有挑战性的更广泛的脸部基准上实现了显着的结果,我们的结果表明平均精度为89.2%。重要的是,我们在挑战环境中表现出卓越的性能和鲁棒性。

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