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首页> 外文期刊>Electronic Letters on Computer Vision and Image Analysis: ELCVIA >Robust Real-Time Gradient-based Eye Detection and Tracking Using Transform Domain and PSO-Based Feature Selection
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Robust Real-Time Gradient-based Eye Detection and Tracking Using Transform Domain and PSO-Based Feature Selection

机译:使用变换域和基于PSO的特征选择进行鲁棒的基于实时梯度的人眼检测和跟踪

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Despite numerous research on eye detection and tracking, this field of study remains challenging due to the individuality of eyes, occlusion, and variability in scale, location, and light conditions. This paper combines a techniques of feature extraction and a feature selection method to achieve a significant increase in eye recognition. Subspace methods may improve detection efficiency and accuracy of eye centers detection using dimensionality reduction. In this study, HoG descriptor is used to lay the ground for BPSO based feature selection. Histogram of Oriented Gradient (HoG) features are used for efficient extraction of pose, translation and illumination invariant features. HoG descriptors uses the fact that local object appearance and shape within an image can be described by the distribution of intensity gradients or edge directions. The method upholds invariance to geometric and photometric transformations. The performance of presented method is evaluated using several benchmark datasets, namely, BioID and RS-DMV. Experimental results obtained by applying the proposed algorithm on BioID dataset show that the proposed system outperforms other eye recognition systems. A significant increase in the recognition rate is achieved when using the combination of HoG descriptor, BPSO, and SVM for feature extraction, feature selection and training phase respectively. The Recognition rate for BioID dataset was 99.6% and the detection time was 15.24 msec for every single frame.
机译:尽管对眼睛检测和跟踪进行了大量研究,但是由于眼睛的个性,遮挡以及规模,位置和光照条件的变化,该研究领域仍然具有挑战性。本文结合了特征提取技术和特征选择方法,以实现人眼识别的显着提高。子空间方法可以使用降维来提高检测效率和眼中心检测的准确性。在这项研究中,HoG描述符用于为基于BPSO的特征选择奠定基础。定向梯度直方图(HoG)特征用于有效提取姿势,平移和照明不变特征。 HoG描述符使用以下事实:可以通过强度梯度或边缘方向的分布来描述图像中局部对象的外观和形状。该方法支持几何和光度转换的不变性。使用几种基准数据集(即BioID和RS-DMV)评估了所提出方法的性能。通过将所提出的算法应用于BioID数据集获得的实验结果表明,所提出的系统优于其他人眼识别系统。当分别使用HoG描述符,BPSO和SVM的组合进行特征提取,特征选择和训练阶段时,可大大提高识别率。 BioID数据集的识别率为99.6%,每帧的检测时间为15.24毫秒。

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