A novel Quantized Gradient Direction based face image representation and recognition technique

M. Parlewar, H. Patil, K. Bhurchandi
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引用次数: 2

Abstract

This paper presents a novel quantized gradient based local feature descriptor, named Local Quantized Gradient Direction (LQGD) descriptor and the subsequent Partitioned Gradient Histogram, for facial image representation. The 8 bit LQGD descriptor accommodates eight levels quantized gradient magnitude and direction information from the horizontal and vertical gradients at local facial image pixels using 3×3 neighborhoods. The subsequent novel partitioned histogram based feature detection using the proposed descriptor offers separation in feature space resulting in recognition performance improvement. The technique is also robust to rotation, scale variations and noise due to typical preprocessing, background minimization and the descriptor itself. Spatial and transform domain feature level fusion is used for further performance improvement. The benchmarking of the proposed technique has been done using publicly available YEL and JAFFE databases with other contemporary techniques. The proposed technique outperforms the other published contemporary techniques.
一种新的基于量化梯度方向的人脸图像表示与识别技术
本文提出了一种新的基于量化梯度的局部特征描述符,即局部量化梯度方向描述符(LQGD)及其后续的分区梯度直方图。8位LQGD描述符使用3×3邻域容纳来自局部面部图像像素的水平和垂直梯度的8级量化梯度幅度和方向信息。随后,使用该描述符的基于分区直方图的特征检测提供了特征空间的分离,从而提高了识别性能。由于典型的预处理、背景最小化和描述符本身,该技术对旋转、尺度变化和噪声也具有鲁棒性。利用空间和变换域特征级融合进一步提高性能。所建议的技术的基准测试是使用公开可用的YEL和JAFFE数据库以及其他现代技术完成的。所提出的技术优于其他已发表的当代技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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