Gender classification based on similarity features through SURF and SVM

D. K. K. Galla, B. Mukamalla
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引用次数: 5

Abstract

The recognisable proof of people in view of their biometric body parts, for example, face, fingerprint, walk, iris, and voice, assumes an imperative part in electronic applications and has turned into a prominent territory of research in image pre-processing. It is likewise a standout amongst the best utilisations of computer-human interaction and understanding. Out of all the previously mentioned body parts, the face is one of most well known qualities in view of its extraordinary feature. In reality, people can process a face in an assortment of approaches to characterise it by its personality, alongside various different attributes. In this paper, we proposed a new algorithm to extract the facial features using SURF algorithm, features are invariant to extract affine transformations are extracted from each face using speeded up robust features (SURF) method (Morteza and Yousefi, 2011) and shows best accuracy on real-time face images compared with different licence datasets like ORL database and FGNet database and with different training ratios by using SVM algorithm (Rahman et al., 2013; Moghaddam and Yang; 2000; Swaminathan, 2000).
基于SURF和SVM相似性特征的性别分类
人脸、指纹、步态、虹膜、声音等人体生物特征的识别证明在电子应用中占有重要地位,已成为图像预处理领域的一个重要研究领域。它同样是人机交互和理解的最佳应用之一。在前面提到的所有身体部位中,脸是最著名的特征之一,因为它具有非凡的特征。在现实中,人们可以用各种各样的方法来处理一张脸,通过它的个性和各种不同的属性来描述它。在本文中,我们提出了一种使用SURF算法提取人脸特征的新算法,特征是不变的,提取仿射变换时使用加速鲁棒特征(SURF)方法(Morteza and Yousefi, 2011)从每张人脸中提取(Morteza and Yousefi, 2011),与ORL数据库和FGNet数据库等不同许可证数据集以及使用不同训练比例的SVM算法相比,在实时人脸图像上显示出最好的准确性(Rahman et al., 2013;穆加达姆和杨;2000;Swaminathan, 2000)。
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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