基于二进制abc算法的人脸识别特征选择

Malepati Bala Siva Sai Akhil, P. Aashish, K. Manikantan
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引用次数: 2

摘要

由于光照变化、姿态变化以及大多数图像捕获技术对二维图像的限制等诸多挑战,人脸识别是非侵入性的。本文提出了二元人工蜂群(BABC)、水平特征提取和特征库扩展三种新技术。BABC是一种二元版的人工蜂群(Artificial Bee Colony, ABC)特征选择技术,用于对所选特征进行高效约简。它从特征向量空间中优选特征。水平特征提取用于提取人脸图像的独特特征。为了更好的识别,采用特征库扩展来增加特征库的大小。在LFW和CAS-PEAL两个标准人脸数据库上的实验结果表明,所提技术的一致性和人脸识别的显著增强。
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Feature selection using Binary-ABC algorithm for DWT-based face recognition
Face recognition is non-invasive due to various challenges like illumination variation, pose variation and limitation of 2D images from most of the image capturing technologies. In this paper three novel techniques are proposed namely Binary Artificial Bee Colony (BABC), horizontal feature extraction and feature gallery expansion. BABC is a binary version of Artificial Bee Colony (ABC) which is employed as feature selection technique for efficient reduction in selected features. It optimally selects the features from the feature vector space. Horizontal feature extraction is used for extracting unique features for face images. Feature gallery expansion is employed to increase the feature galley size for better recognition. Experimental results on two standard face databases namely LFW and CAS-PEAL indicates the consistency of the proposed techniques and prominent enhancement in face recognition.
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