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Cross-Validated Locally Polynomial Modeling for 2-D/3-D Gaze Tracking With Head-Worn Devices

机译:用头磨损装置交叉验证的局部多项式模型,用于2-D / 3-D凝视跟踪

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In the context of wearable gaze tracking techniques, the problems of two-dimensional (2-D) and three-dimensional (3-D) gaze estimation can be viewed as inferring 2-D epipolar lines and 3-D visual axes from eye monitoring cameras. To this end, in this article, a simple local polynomial model is proposed to back-project a pupil center onto its corresponding visual axis. Based on this approximation, a homographylike relation is derived in a local manner, and via the Leave-One-Out cross-validation criterion, training gaze samples at one certain depth is leveraged to partition entire input space into multiple overlapping subregions. Then, the gaze data at another depth are utilized to recover the epipolar point, i.e., the image eyeball center. Thus, given a pupil image, the corresponding epipolar line can be determined by the resolved homographylike mapping and the epipolar point. By using the same partition structure, 3-D gaze prediction model can be inferred by solving a nonlinear optimization problem, which aims to minimize the angular disparities between training visual directions and prediction ones. Meanwhile, it is necessary to form a good starting point and suitable constraints for the optimization problem. Otherwise, it may end up with trivial solutions, i.e., faraway eye positions. To facilitate the practical implementation of our proposed method, we also analyze how the spatial distribution of calibration points impacts the model learning accuracy. The experiment results justify the effectiveness of our proposed gaze estimation method for both the normal vision and eyewear users.
机译:在可穿戴凝视跟踪技术的背景下,可以从眼睛监测的推断2-D末端线和3-D视觉轴上观察二维(2-D)和三维(3-D)凝视估计的问题相机。为此,在本文中,提出了一种简单的本地多项式模型将瞳孔中心返回到其对应的视觉轴上。基于该近似,以局部方式导出同性化关系,并且通过休留次交叉验证标准,利用一定深度处的训练凝视样本被利用以将整个输入空间分配到多个重叠的子区域中。然后,利用另一个深度的凝视数据来恢复末极点,即图像眼球中心。因此,给定瞳孔图像,相应的骨头线可以通过分辨的均相色谱映射和底波点来确定。通过使用相同的分区结构,可以通过求解非线性优化问题来推断3-D凝视预测模型,其旨在最小化训练视觉方向和预测方向之间的角度差异。同时,有必要为优化问题形成良好的起点和适当的约束。否则,它可能最终有琐碎的解决方案,即遥远的眼睛位置。为促进我们所提出的方法的实际实施,我们还分析了校准点的空间分布方式如何影响模型学习精度。实验结果证明了我们提出的凝视估计方法对正常视觉和眼镜用户的有效性。

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