跟踪注视的动态预测

E. Barth, Jan Drewes, T. Martinetz
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引用次数: 8

摘要

我们提出了一个模型,预测谁是观看图像的动态序列观察者的眼球运动。作为显著性程度的指标,我们评估了时空结构张量的不变性,该不变性表明其内在维度至少为2。显著性用于派生候选位置的列表。在这个列表中,根据监督学习找到的映射选择当前参加的位置。用于学习的真实位置是通过眼动仪获得的。除了基于显著性的候选人外,选择算法还使用过去参加过的地点的有限历史记录。这种映射是线性的,因此可以迅速适应单个观察者。这种映射是最优的,因为它是通过梯度下降最小化预测位置和实际位置之间的总体二次差来获得的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic predictions of tracked gaze
We present a model for predicting the eye-movements of observers who is viewing dynamic sequences of images. As an indicator for the degree of saliency we evaluate an invariant of the spatio-temporal structure tensor that indicates an intrinsic dimension of at least two. The saliency is used to derive a list of candidate locations. Out of this list, the currently attended location is selected according to a mapping found by supervised learning. The true locations used for learning are obtained with an eye-tracker. In addition to the saliency-based candidates, the selection algorithm uses a limited history of locations attended in the past. The mapping is linear and can thus be quickly adapted to the individual observer. The mapping is optimal in the sense that it is obtained by minimizing, by gradient descent, the overall quadratic difference between the predicted and the actually attended location.
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