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Multiscale Face Detection: A New Approach to Robust Face Detection

机译:多尺度人脸检测:一种可靠的人脸检测新方法

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This paper presents a novel method for detecting multiple frontal faces in still images using multi-scale processing. The main characteristic of this algorithm is its stability in detecting faces with seldom false detections and a high correct detection rate. The novelty of this work comes from the utilization of multiscale detection and using two classifiers to reduce false detections. The algorithm generally has two stages: in the first stage, a face is detected in a unique scale and in the second stage, only the faces that are located in the neighbor scales are accepted as real faces. Consequently, a still image is first resized and scanned block wise, and then each enhanced block is tested for being face. One dimensional Harr wavelet is used for feature extraction, which gives appropriate discriminating features between the face and nonface classes. Detection results at each scale are accumulated in an internal database, so the ultimate detection is prepared based on the mutual detection information between consequent scales. To parameterize both the Bayesian and the simple proposed classifier, 2,643 faces were congregated from famous face databases and more than 10,000 non-face samples were selected from nature images. Experimental results using images gathered from known databases like MIT-CMU show great ability of the proposed algorithm in detecting faces.
机译:本文介绍了一种使用多尺度处理检测静止图像中多个正面的新方法。该算法的主要特征是其稳定性地检测具有很少的假检测和高正确检测率的面。这项工作的新颖性来自多尺度检测和使用两个分类器来降低错误检测。该算法通常具有两个阶段:在第一阶段中,在独特的尺度和第二级中检测面部,仅作为真正的面被接受位于邻居尺度中的面。因此,首先调整静止图像并扫描块明智,然后测试每个增强块的面部。一维HARL小波用于特征提取,这在面部和非面积之间提供适当的区分特征。每个比例的检测结果累积在内部数据库中,因此基于随后的尺度之间的相互检测信息来编制最终检测。为了参数化贝叶斯和简单的拟议分类器,将从着名的面部数据库中聚集2,643个面,从自然图像中选择了超过10,000个非面部样本。使用像MIT-CMU这样的已知数据库收集的图像的实验结果表明了所提出的算法在检测面上的能力。

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