Multi-View Face Detection in Open Environments using Gabor Features and Neural Networks

R. Mohammadian, M. Mahlouji, A. Shahidinejad
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引用次数: 1

Abstract

Multi-view face detection in open environments is a challenging task, due to the wide variations in illumination, face appearances and occlusion. In this paper, a robust method for multi-view face detection in open environments, using a combination of Gabor features and neural networks, is presented. Firstly, the effect of changing the Gabor filter parameters (orientation, frequency, standard deviation, aspect ratio and phase offset) for an image is analysed, secondly, the range of Gabor filter parameter values is determined and finally, the best values for these parameters are specified. A multilayer feedforward neural network with a back-propagation algorithm is used as a classifier. The input vector is obtained by convolving the input image and a Gabor filter, with both the angle and frequency values equal to π/2. The proposed algorithm is tested on 1,484 image samples with simple and complex backgrounds. The experimental results show that the proposed detector achieves great detection accuracy, by comparing it with several popular face-detection algorithms, such as OpenCV’s Viola-Jones detector.
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基于Gabor特征和神经网络的开放环境下多视图人脸检测
开放环境下的多视图人脸检测是一项具有挑战性的任务,因为光照、人脸外观和遮挡的变化很大。本文提出了一种结合Gabor特征和神经网络的开放环境下多视图人脸检测鲁棒方法。首先分析了改变Gabor滤波器参数(方向、频率、标准差、纵横比和相位偏移)对图像的影响,然后确定了Gabor滤波器参数取值的范围,最后给出了这些参数的最佳取值。采用带反向传播算法的多层前馈神经网络作为分类器。输入矢量由输入图像与Gabor滤波器进行卷积得到,其角度和频率值均为π/2。在1484张具有简单和复杂背景的图像样本上进行了测试。实验结果表明,该检测器与几种常用的人脸检测算法(如OpenCV的Viola-Jones检测器)进行了比较,取得了较高的检测精度。
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