A Deep Learning Approach for Real-Time Analysis of Attendees’ Engagement in Public Events

IF 0.6 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Communications Software and Systems Pub Date : 2021-01-01 DOI:10.24138/JCOMSS-2021-0072
S. Mathew, M. Alkhatib, M. Barachi
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引用次数: 1

Abstract

—Smart city analytics requires the harnessing and analysis of emotions and sentiments conveyed by images and video footage. In recent years, facial sentiment analysis attracted significant attention for different application areas, including marketing, gaming, political analytics, healthcare, and human computer interaction. Aiming at contributing to this area, we propose a deep learning model enabling the accurate emotion analysis of crowded scenes containing complete and partially occluded faces, with different angles, various distances from the camera, and varying resolutions. Our model consists of a sophisticated convolutional neural network (CNN) that is combined with pooling, densifying, flattening, and Softmax layers to achieve accurate sentiment and emotion analysis of facial images. The proposed model was successfully tested using 3,750 images containing 22,563 faces, collected from a large consumer electronics trade show. The model was able to correctly classify the test images which contained faces with different angles, distances, occlusion areas, facial orientation and resolutions. It achieved an average accuracy of 90.6% when distinguishing between seven emotions (Happiness, smiling, laughter, neutral, sadness, anger, and surprise) in complete faces, and 86.16% accuracy in partially occluded faces. Such model can be leveraged for the automatic analysis of attendees’ engagement level in events. Furthermore, it can open the door for many useful applications in smart cities, such as measuring employees’ satisfaction and citizens’ happiness.
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一种用于实时分析公共活动参与者参与度的深度学习方法
智慧城市分析需要利用和分析图像和视频片段所传达的情绪和情感。近年来,面部情绪分析在不同的应用领域引起了极大的关注,包括市场营销、游戏、政治分析、医疗保健和人机交互。为了在这一领域做出贡献,我们提出了一种深度学习模型,能够对包含完全和部分遮挡面部的拥挤场景进行准确的情感分析,这些场景具有不同的角度、不同的距离和不同的分辨率。我们的模型由一个复杂的卷积神经网络(CNN)组成,它结合了池化、致密化、平坦化和Softmax层,以实现对面部图像的准确情感和情绪分析。该模型成功地测试了3750张图片,其中包含22563张人脸,这些图片是从一个大型消费电子产品贸易展上收集的。该模型能够对包含不同角度、距离、遮挡面积、人脸方向和分辨率的人脸进行正确分类。在识别完整面部的七种情绪(快乐、微笑、大笑、中性、悲伤、愤怒和惊讶)时,准确率平均为90.6%,在部分遮挡的面部识别准确率为86.16%。该模型可用于自动分析活动参与者的参与程度。此外,它还可以为智慧城市中的许多有用应用打开大门,例如衡量员工满意度和公民幸福感。
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来源期刊
Journal of Communications Software and Systems
Journal of Communications Software and Systems Engineering-Electrical and Electronic Engineering
CiteScore
2.00
自引率
14.30%
发文量
28
审稿时长
8 weeks
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