论文标题
对面部情感识别和评估的深度学习方法的强大框架
A Robust Framework for Deep Learning Approaches to Facial Emotion Recognition and Evaluation
论文作者
论文摘要
面部情绪识别是计算机视觉领域内的一个庞大而复杂的问题空间,因此需要使用普遍接受的基线方法来评估所提出的模型。尽管测试数据集已在学术领域的现实世界应用中达到了这一目的,并且对此类模型的测试缺乏任何真正的比较。因此,我们提出了一个框架,可以比较开发用于FER的模型并以恒定的标准化方式相互对比。轻巧的卷积神经网络在Actignnet数据集上训练了一个大型变量数据集,可用于面部情感识别,并使用我们建议的框架开发和部署了Web应用程序,作为概念证明。 CNN嵌入了我们的应用中,并且能够立即实时面部情感识别。当对Actionnet测试设置进行测试时,该模型可实现八种不同情绪的情绪分类的高精度。使用我们的框架,该模型和其他模型的有效性不仅可以根据模型疗效在样本测试数据集上的准确性,而且在野生实验中评估模型疗效。此外,我们的应用程序还具有保存和存储任何被捕获或上传到情感的图像的能力,以识别情感,从而策划更质量和多样化的面部情感识别数据集。
Facial emotion recognition is a vast and complex problem space within the domain of computer vision and thus requires a universally accepted baseline method with which to evaluate proposed models. While test datasets have served this purpose in the academic sphere real world application and testing of such models lacks any real comparison. Therefore we propose a framework in which models developed for FER can be compared and contrasted against one another in a constant standardized fashion. A lightweight convolutional neural network is trained on the AffectNet dataset a large variable dataset for facial emotion recognition and a web application is developed and deployed with our proposed framework as a proof of concept. The CNN is embedded into our application and is capable of instant real time facial emotion recognition. When tested on the AffectNet test set this model achieves high accuracy for emotion classification of eight different emotions. Using our framework the validity of this model and others can be properly tested by evaluating a model efficacy not only based on its accuracy on a sample test dataset, but also on in the wild experiments. Additionally, our application is built with the ability to save and store any image captured or uploaded to it for emotion recognition, allowing for the curation of more quality and diverse facial emotion recognition datasets.