真实世界数据的鲁棒眼角检测方法

G. Santos, Hugo Proença
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引用次数: 18

摘要

角点检测已经激发了大量的研究,在与计算机视觉相关的各种任务中尤其重要,作为进一步阶段的基础。人脸图像中的眼角检测在生物识别系统和辅助驾驶系统中具有重要的应用价值。我们对目前最先进的眼角检测建议进行了实证评估,发现它们只有在处理高质量数据时才能取得令人满意的结果。因此,在本文中,我们描述了一种强调鲁棒性的眼角检测方法,即其处理退化数据的能力,以及对现实世界条件的适用性。我们的实验表明,所提出的方法在无噪声和退化数据(模糊和旋转图像以及尺度变化显著的图像)方面都优于其他方法,这是一项重大成就。
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A robust eye-corner detection method for real-world data
Corner detection has motivated a great deal of research and is particularly important in a variety of tasks related to computer vision, acting as a basis for further stages. In particular, the detection of eye-corners in facial images is important in applications in biometric systems and assisted-driving systems. We empirically evaluated the state-of-the-art of eye-corner detection proposals and found that they achieve satisfactory results only when dealing with high-quality data. Hence, in this paper, we describe an eye-corner detection method that emphasizes robustness, i.e., its ability to deal with degraded data, and applicability to real-world conditions. Our experiments show that the proposed method outperforms others in both noise-free and degraded data (blurred and rotated images and images with significant variations in scale), which is a major achievement.
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