A LSTM-based Approach for Gait Emotion Recognition

Yajurv Bhatia, A. Bari, Marina L. Gavrilova
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引用次数: 3

Abstract

Gait Emotion Recognition (GER) is a popular problem which has applications in a variety of fields, including smart home design, cognitive systems, border security, robotics, virtual reality, and gaming. In the recent years, several Deep Learning (DL) based approaches for GER have been adopted. However, a vast majority of such methods rely on Deep Neural Networks (DNNs) with significant number of model parameters which are neither robust, nor efficient. This paper contributes to the domain of knowledge by presenting a novel light architecture for inferring human emotions through gait. It outperforms all recent deep learning methods, while having the lowest inference time for each gait sample.
基于lstm的步态情感识别方法
步态情感识别(GER)是一个流行的问题,在智能家居设计、认知系统、边境安全、机器人、虚拟现实和游戏等各个领域都有应用。近年来,一些基于深度学习(DL)的GER方法被采用。然而,绝大多数此类方法依赖于具有大量模型参数的深度神经网络(dnn),这些方法既不鲁棒,也不高效。本文通过提出一种新的光架构来通过步态推断人类的情绪,从而为知识领域做出了贡献。它优于所有最近的深度学习方法,同时对每个步态样本的推理时间最短。
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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