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Individual predictions of eye-movements with dynamic scenes

机译:具有动态场景的个人预测

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We present a model that predicts saccadic eye-movements and can be tuned to a particular human observer who is viewing a dynamic sequence of images. Our work is motivated by applications that involve gaze-contingent interactive displays on which information is displayed as a function of gaze direction. The approach therefore differs from standard approaches in two ways: (ⅰ) we deal with dynamic scenes, and (ⅱ) we provide means of adapting the model to a particular observer. As an indicator for the degree of saliency we evaluate the intrinsic dimension of the image sequence within a geometric approach implemented by using the structure tensor. Out of these candidate saliency-based locations, the currently attended location is selected according to a strategy found by supervised learning. The data are obtained with an eye-tracker and subjects who view video sequences. The selection algorithm receives candidate locations of current and past frames and a limited history of locations attended in the past. We use a linear mapping that is obtained by minimizing the quadratic difference between the predicted and the actually attended location by gradient descent. Being linear, the learned mapping can be quickly adapted to the individual observer.
机译:我们提出了一种预测扫视眼球运动的模型,可以调整到正在观看动态图像序列的特定人类观察者。我们的工作是由涉及凝视偶然交互式显示的应用程序的激励,其中信息显示为凝视方向的函数。因此,该方法以两种方式与标准方法不同:(Ⅰ)我们处理动态场景,(Ⅱ)我们提供将模型适应特定观察者的手段。作为显着程度的指示,我们评估通过使用结构张量实现的几何方法内的图像序列的内在尺寸。除了基于候选的基于候选的地点之外,根据受监督学习的策略选择当前参加的位置。通过观看视频序列的眼跟踪器和受试者获得数据。选择算法接收当前和过去框架的候选位置以及过去参加的位置历史。我们使用线性映射来通过梯度下降最小化预测和实际参加的位置之间的二次差异来获得。线性,学习映射可以快速适应各个观察者。

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