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A Hybrid Machine Learning Approach for Sentiment Analysis of Partially Occluded Faces

机译:一种杂交机学习方法,具有部分闭塞面的情绪分析

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With millions of images and videos uploaded on social media every day, facial sentiment analysis has gained significant attention as means of gaining large scale insights into people’s emotions and sentiments. While several models have been proposed for sentiment and emotion analysis of complete, camera-facing pictures, the analysis of images appearing in natural settings and crowded scenes poses more challenges. In such settings, images typically contain a mix of complete and partially occluded faces (i.e. obstructed faces) presented with different angles, resolutions and distances from the camera. In this paper, we propose a hybrid machine learning model combining convolutional neural networks (CNNs) and support vector machines (SVMs) to achieve accurate facial sentiment and emotion analysis of incomplete and partially occluded facial images. The proposed model was successfully tested using 4,690 images containing 25,400 faces, collected from a large-scale public event. The model was able to correctly classify the test dataset containing faces with different angles, camera distances, occlusion areas, and image resolutions. The results show a classification accuracy of 89.9% for facial sentiment analysis, and an accuracy of 87.4% when distinguishing between seven emotions in partially occluded faces. This makes our model suitable for real-life practical applications.
机译:每天都有数百万图像和视频,每天上传社交媒体,面部情感分析已经提高了重大关注,作为对人们情绪和情绪的大规模洞察力的手段。虽然已经提出了几种模型的情绪和情感分析的完整,相机的图片,但是在自然设置和拥挤场景中出现的图像的分析会带来更多挑战。在这样的设置中,图像通常包含具有不同角度,分辨率和距离的不同角度,分辨率和距离的完整和部分封闭的面(即阻塞面)的混合。在本文中,我们提出了一种混合机器学习模型,将卷积神经网络(CNNS)(CNNS)和支持向量机(SVM)组合以实现对不完全和部分闭塞面部图像的准确面部情感和情感分析。通过从大型公共活动中收集的含有25,400个面孔的4,690张图像成功测试了所提出的模型。该模型能够正确地对包含不同角度,相机距离,遮挡区域和图像分辨率的面的测试数据集。结果显示面部情感分析的分类准确度为89.9%,在部分闭塞面的七种情绪区分七种情绪时,精度为87.4%。这使我们的模型适用于现实生活实际应用。

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