Improved Capsule Network for Gaze Estimation in Wireless Sensor Networks

Mingyuan Luo, Xi Liu, Wei Wang, Wei Huang
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引用次数: 1

Abstract

In this study, aiming at the problem of gaze estimation in the wireless sensor network in the car, we use image-based method to estimate gaze based on the single camera sensor. We use the deep learning model and propose the improved model from three aspects based on the original capsule network. The first is to increase the convolution layer, the second is to increase the capsule layer, and the third is to widen the capsule layer in the network. Through many contrast experiments, it is proved that the appropriate use of the first or second improved method can achieve performance over other comparison models, and the prediction results of gaze estimation are almost no different from the real gaze direction.
用于无线传感器网络注视估计的改进胶囊网络
本研究针对汽车无线传感器网络中的凝视估计问题,采用基于图像的方法,基于单摄像头传感器进行凝视估计。我们使用深度学习模型,并在原胶囊网络的基础上从三个方面提出改进模型。第一是增加卷积层,第二是增加胶囊层,第三是拓宽网络中的胶囊层。通过多次对比实验证明,适当使用第一种或第二种改进方法可以取得优于其他比较模型的性能,并且注视估计的预测结果与真实注视方向几乎没有差异。
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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