学习在自我中心视频中预测凝视

Yin Li, A. Fathi, James M. Rehg
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引用次数: 240

摘要

我们提出了一个以自我为中心的视频的凝视预测模型,该模型利用了相机佩戴者行为中存在的隐含线索。具体来说,我们从视频中计算相机佩戴者的头部运动和手的位置,并将它们结合起来估计眼睛在看哪里。我们进一步将凝视的动态行为建模,特别是注视,作为潜在变量来改进凝视预测。我们的凝视预测结果在公开可用的以自我为中心的视觉数据集上大大优于最先进的算法。此外,我们证明,通过将我们的凝视预测插入到最先进的方法中,我们在识别日常动作和分割前景对象方面获得了显著的性能提升。
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Learning to Predict Gaze in Egocentric Video
We present a model for gaze prediction in egocentric video by leveraging the implicit cues that exist in camera wearer's behaviors. Specifically, we compute the camera wearer's head motion and hand location from the video and combine them to estimate where the eyes look. We further model the dynamic behavior of the gaze, in particular fixations, as latent variables to improve the gaze prediction. Our gaze prediction results outperform the state-of-the-art algorithms by a large margin on publicly available egocentric vision datasets. In addition, we demonstrate that we get a significant performance boost in recognizing daily actions and segmenting foreground objects by plugging in our gaze predictions into state-of-the-art methods.
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