Efficient SMQT features for snow-based classification on face detection and character recognition tasks

Y. Artan, A. Burry, V. Kozitsky, P. Paul
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引用次数: 3

Abstract

Face detection using local successive mean quantization transform (SMQT) features and the sparse network of winnows (SNoW) classifier has received interest in the computer vision community due to its success under varying illumination conditions. Recent work has also demonstrated the effectiveness of this classification technique for character recognition tasks. However, heavy storage requirements of the SNoW classifier necessitate the development of efficient techniques to reduce storage and computational requirements. This study shows that the SNoW classifier built with only a limited number of distinguishing SMQT features provides comparable performance to the original dense snow classifier. Initial results using the well-known CMU-MIT facial image database and a private character database are used to demonstrate the effectiveness of the proposed method.
有效的SMQT特征在基于雪的人脸检测和字符识别任务分类
基于局部连续均值量化变换(SMQT)特征和稀疏窗口网络(SNoW)分类器的人脸检测由于其在不同光照条件下的成功而受到了计算机视觉界的关注。最近的工作也证明了这种分类技术在字符识别任务中的有效性。然而,SNoW分类器的大量存储需求需要开发有效的技术来减少存储和计算需求。本研究表明,仅使用有限数量的可区分的SMQT特征构建的SNoW分类器可以提供与原始密集SNoW分类器相当的性能。使用著名的CMU-MIT面部图像数据库和私有字符数据库进行初步结果验证了所提方法的有效性。
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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