基于深度学习分析的高效客户情感检测方法综述

Kottilingam Kottursamy
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引用次数: 26

摘要

面部表情识别在社会科学和人机交互中的作用受到了广泛的关注。深度学习的进步导致了这一领域的进步,其精确度超过了人类的水平。本文讨论了用于情感识别的各种常见深度学习算法,同时利用eXnet库来提高准确性。另一方面,内存和计算还有待克服。过度拟合是大型模型的一个问题。解决这个问题的一个方法是减少泛化误差。我们采用一种新的卷积神经网络(CNN) eXnet,利用并行特征提取构建新的CNN模型。最新的eXnet(表达式网)模型改进了以前模型的不准确性,同时具有更少的参数。已经使用了几十年的数据增强技术正在与广义的eXnet一起使用。它采用有效的方法来减少过拟合,同时保持整体尺寸在控制之下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review on Finding Efficient Approach to Detect Customer Emotion Analysis using Deep Learning Analysis
The role of facial expression recognition in social science and human-computer interaction has received a lot of attention. Deep learning advancements have resulted in advances in this field, which go beyond human-level accuracy. This article discusses various common deep learning algorithms for emotion recognition, all while utilising the eXnet library for achieving improved accuracy. Memory and computation, on the other hand, have yet to be overcome. Overfitting is an issue with large models. One solution to this challenge is to reduce the generalization error. We employ a novel Convolutional Neural Network (CNN) named eXnet to construct a new CNN model utilising parallel feature extraction. The most recent eXnet (Expression Net) model improves on the previous model's inaccuracy while having many fewer parameters. Data augmentation techniques that have been in use for decades are being utilized with the generalized eXnet. It employs effective ways to reduce overfitting while maintaining overall size under control.
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