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Where are they looking?

机译:他们在哪里看?

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摘要

Humans have the remarkable ability to follow the gaze of other people to identify what they are looking at. Following eye gaze, or gaze-following, is an important ability that allows us to understand what other people are thinking, the actions they are performing, and even predict what they might do next. Despite the importance of this topic, this problem has only been studied in limited scenarios within the computer vision community. In this paper, we propose a deep neural network-based approach for gaze-following and a new benchmark dataset, GazeFollow, for thorough evaluation. Given an image and the location of a head, our approach follows the gaze of the person and identifies the object being looked at. Our deep network is able to discover how to extract head pose and gaze orientation, and to select objects in the scene that are in the predicted line of sight and likely to be looked at (such as televisions, balls and food). The quantitative evaluation shows that our approach produces reliable results, even when viewing only the back of the head. While our method outperforms several baseline approaches, we are still far from reaching human performance on this task. Overall, we believe that gaze-following is a challenging and important problem that deserves more attention from the community.
机译:人类具有非凡的能力,可以跟随其他人的视线来识别他们在看什么。注视视线或跟随视线是一项重要的能力,它使我们能够了解其他人的想法,他们正在执行的动作,甚至预测他们下一步可能会做什么。尽管此主题很重要,但仅在计算机视觉社区中的有限情况下研究了此问题。在本文中,我们提出了一种基于深层神经网络的注视跟踪方法以及一个新的基准数据集GazeFollow,以进行全面评估。在给定图像和头部位置的情况下,我们的方法会跟随人的视线并识别正在观察的对象。我们的深度网络能够发现如何提取头部姿势和注视方向,以及如何选择场景中处于预测视线范围内并可能会被观看的物体(例如电视,球和食物)。定量评估表明,即使仅观察头部后部,我们的方法也能产生可靠的结果。尽管我们的方法优于几种基准方法,但在此任务上我们还远未达到人类的绩效。总体而言,我们认为关注凝视是一个具有挑战性的重要问题,值得社会各界的关注。

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