基于Zernike矩特征向量训练的神经网络对人脸定位质量的在线测量

Mohammed Saaidia, S. Lelandais, M. Ramdani
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引用次数: 0

摘要

提出了一种基于神经网络的人脸定位质量测量方法。首先,利用泽尼克矩特征参数向量对神经网络进行训练;在监督训练过程中,以图像中人脸周围像素的坐标向量作为目标向量。因此,经过训练的神经网络在其输出层上提供一个坐标向量(p, Theta),表示处理图像中包含的面部周围的像素。在第二阶段,利用图像的TSL色彩空间训练的另一个神经网络,对第一阶段获得的定位质量进行量化度量。在XM2VTS数据库上进行了实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Quality measurement of face localization obtained by neural networks trained with Zernike moments feature vectors
Quality measurement of face localization using neural networks is presented in this communication. First, neural network was trained with Zernike moments feature parameters vectors. Coordinate vectors of pixels surrounding faces in images were used as target vectors on the supervised training procedure. Thus, trained neural network provides on its output layer a coordinate's vector (p, Theta) representing pixels surrounding the face contained in treated image. In second stage, another neural network, trained using TSL color space of images, is used to give a measure quantifying the quality of the localization obtained in the first stage. Experiments of the proposed method were carried out on the XM2VTS database.
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