基于决策树集合级联的人脸检测算法

A. Lebedev, V. Pavlov, V. Khryashchev, O. Stepanova
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引用次数: 3

摘要

提出了一种基于决策树级联集成的人脸检测算法。新方法允许通过使用多个分类器来检测除正面位置以外的人脸。每个分类器都针对旋转头部的特定角度范围进行训练。结果表明,对于标准尺寸的图像,CEDT的生产率很高。与标准的维奥拉-琼斯人脸检测算法相比,该算法将roc曲线下的面积增加了13%。为了检验该算法在现实世界中的适用性,对其进行了鲁棒性研究。鲁棒性研究表明,基于CEDT的算法显示高斯噪声、脉冲“椒盐”噪声对算法的影响较大(最坏情况下roc曲线下面积减少21.2%,PSNR指标降低至17.99 dB)。同时,模糊、jpeg压缩和JPEG2000算法失真对所提出的人脸检测算法影响不大(roc曲线下面积减少3.5%,PSNR指标降至21.58 dB)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face detection algorithm based on a cascade of ensembles of decision trees
Face detection algorithm based on a cascade of ensembles of decision trees (CEDT) is presented. The new approach allows detecting faces other than the front position through the use of multiple classifiers. Each classifier is trained for a specific range of angles of the rotation head. The results showed a high rate of productivity for CEDT on images with standard size. The algorithm increases the area under the ROC-curve of 13% compared to a standard Viola-Jones face detection algorithm. To test the applicability of the algorithm in the real world have been conducted research on a robustness. Robustness research shown that the algorithm based on the CEDT show that Gaussian noise, impulsive “salt-and-pepper” noise exert a strong influence on the algorithm (in the worst case decrease in the area under the ROC-curve of 21.2% with a decrease in PSNR metric to 17.99 dB). At the same time blurring, JPEG-compression and JPEG2000 algorithms distortion have little effect on the proposed face detection algorithm (reduction of the area under the ROC-curve by 3.5% while reducing PSNR metric to 21.58 dB).
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