基于CNN的面部情绪分析与推荐

Sushant Singh, Ajay Kumar, S. Thenmalar
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引用次数: 0

摘要

如今,在工作场所管理自己的情绪比以往任何时候都更加重要。由于输入图像和融合图像之间需要很强的相关性,当前的方法在情绪预测中存在波动,光照环境的波动可能会影响拟合过程,降低训练数据集中识别的正确性。为了解决这个问题,本文探索了不同类型的算法、神经网络和机器学习技术,这些技术可以作为提高模型效率和鲁棒性的基础。提出的模型由几个模块组成,一个模块将FER2013数据集中的48X48像素灰度人脸图像加载,预处理并使用CNN分类器将获取的图像分类为不同的情绪类别,另一个模块使用Haar-Cascade特征检测人脸并预测相应的情绪,并在输出中显示音频或视频推荐。这将有助于分析个人的情感状态,提供对低光照的鲁棒性,减少拟合过程。
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Facial Emotion Analysis and Recommendation Using CNN
Managing one’s emotions in the workplace is more important nowadays than it ever has been. The current approach shows fluctuation in emotion prediction as there is a need for strong correlation between the input images and fused image, fluctuating illumination environments may impact the fitting process and lessen the recognition correctness, lack in training dataset. To address this problem, this paper explores different types of algorithms, neural networks and machine learning techniques which can be used as a base to increase the efficiency as well as the robustness of our model. The proposed model consists of modules, one will load the 48X48 pixel grayscale images of faces from FER2013 datasets, pre-process it and uses a CNN classifier to classify the acquired image into different emotion categories and the other module uses a Haar-Cascade feature to detect the face and predicts the corresponding emotions and displaying an audio or video recommendation in the output. This will help to analyse the sentimental state of an individual, providing robustness against low illumination, reducing fitting process.
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