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A Novel Eye Center Localization Method for Head Poses With Large Rotations

机译:具有大旋转头部姿势的新型眼部定位方法

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Eye localization is undoubtedly crucial to acquiring large amounts of information. It not only helps people improve their understanding of others but is also a technology that enables machines to better understand humans. Although studies have reported satisfactory accuracy for frontal faces or head poses at limited angles, large head rotations generate numerous defects (e.g., disappearance of the eye), and existing methods are not effective enough to accurately localize eye centers. Therefore, this study makes three contributions to address these limitations. First, we propose a novel complete representation (CR) pipeline that can flexibly learn and generate two complete representations, namely the CR-center and CR-region, of the same identity. We also propose two novel eye center localization methods. This first method employs geometric transformation to estimate the rotational difference between two faces and an unknown-localization strategy for accurate transformation of the CR-center. The second method is based on image translation learning and uses the CR-region to train the generative adversarial network, which can then accurately generate and localize eye centers. Five image databases are employed to verify the proposed methods, and tests reveal that compared with existing methods, the proposed method can more accurately and robustly localize eye centers in challenging images, such as those showing considerable head rotation (both yaw rotation of -67.5° to +67.5° and roll rotation of +120° to -120°), complete occlusion of both eyes, poor illumination in addition to head rotation, head pose changes in the dark, and various gaze interaction.
机译:眼睛本地化无疑对获取大量信息来说是至关重要的。它不仅有助于人们提高他们对他人的理解,而且还是一种技术使机器能够更好地理解人类。尽管研究报告了有限角度的前面或头部姿势的令人满意的精度,但大的头部旋转产生了许多缺陷(例如,眼睛消失),并且现有方法不足以准确地本地化眼中心。因此,这项研究提出了解决这些限制的三个贡献。首先,我们提出了一种新颖的完整代表(CR)管道,可以灵活地学习和生成两个完整的表示,即CR中心和CR区的相同身份。我们还提出了两种新型眼中心定位方法。该第一方法采用几何变换来估计两个面和未知定位策略之间的旋转差,以便进行CR中心的精确变换。第二种方法基于图像转换学习,并使用CR区训练生成的对抗网络,然后可以准确地产生和定位眼中心。采用五种图像数据库来验证所提出的方法,并且测试显示与现有方法相比,该方法可以更准确地且强大地将眼睛中心定位在具有挑战性的图像中,例如显示相当大的头部旋转的那些(横摆旋转-67.5°至+ 67.5°和卷旋转+ 120°至-120°),完全闭塞双眼,除头旋转外,头部姿势变化,呈暗淡,各种凝视相互作用。

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