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Pupil detection under lighting and pose variations in the visible and active infrared bands

机译:光照下的学生检测以及可见和活动红外波段中的姿势变化

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We propose a novel and efficient methodology for the detection of human pupils using face images acquired under controlled and difficult (large pose and illumination changes) conditions in variable spectra (i.e., visible, multi-spectral, and short wave infrared (SWIR)). The methodology is based on template matching, and is composed of an offline and an online mode. During the offline mode, band-dependent eye templates are generated for each eye from the face images of a pre-selected number of subjects. Using the eye templates that are generated in the offline mode, the online pupil detection mode determines the locations of the human eyes and the pupils. A combination of texture- and template-based matching algorithms is used for this purpose. Our method achieved a significantly high detection rate, yielding an average of 96.38% pupil detection accuracy across all datasets used. Based on a comparative analysis on different databases, we concluded that: (i) a single methodological approach can be used to efficiently detect human eyes and pupils of face images (with strong pose and illumination variations) acquired in the visible and hyper-spectral bands, and (ii) the use of texture-based matching and normalized band-specific templates significantly increases detection accuracy. To the best of our knowledge, this is the first time in the open literature that the problem of multi-band pupil detection on face images in the presence of lighting and pose variations, is being investigated using a unified algorithm.
机译:我们提出了一种新颖而有效的方法,用于使用在可变光谱(即可见光,多光谱和短波红外(SWIR))的受控和困难(姿势和照明变化较大)条件下获取的面部图像来检测人的瞳孔。该方法基于模板匹配,并且由离线和在线模式组成。在脱机模式期间,从预先选择数量的对象的面部图像为每只眼睛生成与波段相关的眼睛模板。使用在离线模式下生成的眼睛模板,在线瞳孔检测模式可以确定人眼和瞳孔的位置。为此,结合使用了基于纹理和模板的匹配算法。我们的方法实现了很高的检测率,在所有使用的数据集中,平均瞳孔检测准确率达到96.38%。基于对不同数据库的比较分析,我们得出以下结论:(i)可以使用一种方法论方法来有效地检测人眼和瞳孔在可见光谱和高光谱波段中获取的人脸图像(具有强烈的姿势和照明变化) ,以及(ii)使用基于纹理的匹配和规范化的特定于频段的模板会大大提高检测精度。据我们所知,这是公开文献中首次使用统一算法研究在存在光照和姿势变化的情况下对人脸图像进行多波段瞳孔检测的问题。

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