基于深度学习和几何约束的单目自由头3D凝视跟踪

Haoping Deng, Wangjiang Zhu
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引用次数: 107

摘要

自由头三维凝视跟踪在三维空间中输出眼睛位置和凝视矢量,在驾驶员监控、广告分析和监控等场景中有着广泛的应用。可靠和低成本的单目解决方案对于在这些领域的普遍使用至关重要。注意到凝视向量是头部姿势和眼球运动以几何确定性的方式组成的,我们提出了一种新的凝视变换层来连接单独的头部姿势和眼球运动模型。所提出的分解不会受到头部凝视相关过拟合的影响,并且可以将现有的数据集用于其他任务。为了给网络训练增加更强的监督,我们提出了一种两步训练策略,首先用粗糙标签训练子任务,然后用精确的注视标签联合训练。为了在各种条件下实现良好的跨主体性能,我们收集了一个大型数据集,该数据集涵盖了头部姿势和眼球运动,包含200个受试者,并且具有不同的照明条件。我们的深度解决方案实现了最先进的凝视跟踪精度,使用在单个CPU上以1000 fps运行的小型网络(不包括面部对齐时间)达到5.6°的交叉对象预测误差,使用更深的网络达到4.3°的交叉对象误差。
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Monocular Free-Head 3D Gaze Tracking with Deep Learning and Geometry Constraints
Free-head 3D gaze tracking outputs both the eye location and the gaze vector in 3D space, and it has wide applications in scenarios such as driver monitoring, advertisement analysis and surveillance. A reliable and low-cost monocular solution is critical for pervasive usage in these areas. Noticing that a gaze vector is a composition of head pose and eyeball movement in a geometrically deterministic way, we propose a novel gaze transform layer to connect separate head pose and eyeball movement models. The proposed decomposition does not suffer from head-gaze correlation overfitting and makes it possible to use datasets existing for other tasks. To add stronger supervision for better network training, we propose a two-step training strategy, which first trains sub-tasks with rough labels and then jointly trains with accurate gaze labels. To enable good cross-subject performance under various conditions, we collect a large dataset which has full coverage of head poses and eyeball movements, contains 200 subjects, and has diverse illumination conditions. Our deep solution achieves state-of-the-art gaze tracking accuracy, reaching 5.6° cross-subject prediction error using a small network running at 1000 fps on a single CPU (excluding face alignment time) and 4.3° cross-subject error with a deeper network.
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