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Advanced Orientation Robust Face Detection Algorithm Using Prominent Features and Hybrid Learning Techniques

机译:使用突出特征和混合学习技术的先进方向鲁棒面检测算法

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Face detection is one of the most popular topics in computer vision. There are several well-known techniques for face detection, such as the Viola-Jones detector. However, the performance of the Viola-Jones detector is limited since it mainly applies the simple Haar-based features. Many advanced methods, especially the convolutional neural network (CNN) based method, have very good performance in face detection. However, they require huge amount of training data. Moreover, most of existing algorithms are not robust to rotation, head-up, and head-down cases. In this paper, we find that, with some modifications, the Viola-Jones detector can also have very good performance in face detection. In addition to the Haar features, we also apply the prominent features and the color information. With the contour information, the edge-aware filter, the background smoother, the fuzzy classifier, and the relative locations, the prominent features, such as eyes, mouths, noses, and ears, can be extracted accurately. With these features, the accuracy of face detection can be much improved. Simulations show that, even if huge amount of training data is not applied, the proposed algorithm has better performance than state-of-the-art face detection methods, including the CNN-based method.
机译:面部检测是计算机视觉中最受欢迎的主题之一。面部检测有几种众所周知的技术,例如Viola-Jones探测器。但是,Viola-Jones探测器的性能受到限制,因为它主要应用于简单的哈尔的特征。许多先进的方法,尤其是基于卷积神经网络(CNN)的方法,对面部检测具有非常好的性能。但是,它们需要大量的培训数据。此外,大多数现有算法对旋转,朝上和下降案例不起作用。在本文中,我们发现,随着一些修改,Viola-Jones探测器也可以在面部检测方面具有很好的性能。除了HAAR功能外,我们还应用突出的功能和颜色信息。通过轮廓信息,边缘感知过滤器,后台更顺畅,模糊分类器和相对位置,可以精确提取突出的特征,如眼睛,嘴,鼻子和耳朵,如眼睛,嘴巴,鼻子和耳朵。利用这些特征,面部检测的准确性可以得到很大改善。模拟表明,即使不应用大量培训数据,所提出的算法也具有比最先进的面部检测方法更好的性能,包括基于CNN的方法。

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