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Efficient Eye Corner and Gaze Detection for Sclera Recognition Under Relaxed Imaging Constraints

机译:高效的眼角和巩膜识别下的凝视检测放松成像约束下

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Sclera recognition has provoked research interest recently due to the distinctive properties of its blood vessels. However, segmenting noisy sclera areas in eye images under relaxed imaging constraints, such as different gaze directions, capturing on-the-move and at-a-distance, has not been extensively investigated. In our previous work, we proposed a novel method for sclera segmentation under unconstrained image conditions with a drawback being that the eye gaze direction is manually labeled for each image. Therefore, we propose a robust method for automatic eye corner and gaze detection. The proposed method involves two levels of eye corners verification to minimize eye corner point misclassification when noisy eye images are introduced. Moreover, gaze direction estimation is achieved through the pixel properties of the sclera area. Experimental results in on-the-move and at-a-distance contexts with multiple eye gaze directions using the UBIRIS.v2 database show a significant improvement in terms of accuracy and gaze detection rates.
机译:由于血管的独特性质,巩膜识别最近引发了研究兴趣。然而,在轻松的成像约束下的眼睛图像中分割噪声巩膜区域,例如不同的凝视方向,捕获在移动和距离处,尚未得到广泛研究。在我们以前的工作中,我们提出了一种在无约束图像条件下对巩膜分割的新方法,其缺点是针对每个图像手动标记眼睛注视方向。因此,我们提出了一种用于自动眼角和凝视检测的鲁棒方法。所提出的方法涉及两级眼角验证,以最小化眼角点错误分类,当涉及嘈杂的眼睛图像时。此外,通过巩膜区域的像素特性实现了凝视方向估计。使用ubiris.v2数据库的多重眼睛凝视方向的上移动和距离上下文的实验结果显示了准确性和凝视检测速率的显着改善。

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