Estimation of Gaze Region Using Two Dimensional Probabilistic Maps Constructed Using Convolutional Neural Networks

S. Jha, C. Busso
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引用次数: 6

Abstract

Predicting the gaze of a user can have important applications in human computer interactions (HCI). They find applications in areas such as social interaction, driver distraction, human robot interaction and education. Appearance based models for gaze estimation have significantly improved due to recent advances in convolutional neural network (CNN). This paper proposes a method to predict the gaze of a user with deep models purely based on CNNs. A key novelty of the proposed model is that it produces a probabilistic map describing the gaze distribution (as opposed to predicting a single gaze direction). This approach is achieved by converting the regression problem into a classification problem, predicting the probability at the output instead of a single direction. The framework relies in a sequence of downsampling followed by upsampling to obtain the probabilistic gaze map. We observe that our proposed approach works better than a regression model in terms of prediction accuracy. The average mean squared error between the predicted gaze and the true gaze is observed to be 6.89◦ in a model trained and tested on the MSP-Gaze database, without any calibration or adaptation to the target user.
基于卷积神经网络构建的二维概率映射的注视区域估计
预测用户的注视在人机交互(HCI)中具有重要的应用。它们在社交互动、司机分心、人机互动和教育等领域得到了应用。由于卷积神经网络(CNN)的最新进展,基于外观的凝视估计模型得到了显着改进。本文提出了一种纯粹基于cnn的深度模型预测用户凝视的方法。该模型的一个关键新颖之处在于,它产生了一个描述凝视分布的概率图(而不是预测单一的凝视方向)。这种方法是通过将回归问题转换为分类问题来实现的,预测输出而不是单一方向的概率。该框架依赖于一系列的下采样和上采样来获得概率凝视图。我们观察到,我们提出的方法在预测精度方面比回归模型更好。在MSP-Gaze数据库上训练和测试的模型中,预测凝视和真实凝视之间的平均均方误差为6.89◦,没有任何校准或适应目标用户。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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