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Benchmarking commercial emotion detection systems using realistic distortions of facial image datasets

机译:基准测试商业情感检测系统,使用逼真的面部图像数据集扭曲

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摘要

Currently, there are several widely used commercial cloud-based services that attempt to recognize an individual's emotions based on their facial expressions. Most research into facial emotion recognition has used high-resolution, front-oriented, full-face images. However, when images are collected in naturalistic settings (e.g., using smartphone's frontal camera), these images are likely to be far from ideal due to camera positioning, lighting conditions, and camera shake. The impact these conditions have on the accuracy of commercial emotion recognition services has not been studied in full detail. To fill this gap, we selected five prominent commercial emotion recognition systems-Amazon Rekognition, Baidu Research, Face++, Microsoft Azure, and Affectiva-and evaluated their performance via two experiments. In Experiment 1, we compared the systems' accuracy at classifying images drawn from three standardized facial expression databases. In Experiment 2, we first identified several common scenarios (e.g., partially visible face) that can lead to poor-quality pictures during smartphone use, and manipulated the same set of images used in Experiment 1 to simulate these scenarios. We used the manipulated images to again compare the systems' classification performance, finding that the systems varied in how well they handled manipulated images that simulate realistic image distortion. Based on our findings, we offer recommendations for developers and researchers who would like to use commercial facial emotion recognition technologies in their applications.
机译:目前,有几种广泛使用的基于商业云的服务,试图根据他们的面部表情识别个人的情绪。大多数研究面部情感识别已经使用了高分辨率,前面向的全面图像。然而,当在自然化环境中收集图像时(例如,使用智能手机的正面相机),由于相机定位,照明条件和相机抖动,这些图像可能远非理想。这些条件对商业情感认可服务准确性的影响尚未完整地研究了商业情感识别服务的准确性。为了填补这一差距,我们选择了五个突出的商业情感识别系统 - 亚马逊重新识别,百度研究,面部++,微软Azure,并通过两个实验评估了它们的性能。在实验1中,我们将系统的准确性与三个标准化的面部表情数据库绘制的图像进行了比较。在实验2中,我们首先确定了几种常见场景(例如,部分可见的面部),可以在智能手机使用期间导致质量差的图片,并操纵在实验1中用于模拟这些场景的相同一组图像。我们使用操纵图像再次比较系统的分类性能,发现系统在处理逼真图像失真的操纵图像的情况下变化。根据我们的调查结果,我们为希望在其应用中使用商业面部情感识别技术的开发人员和研究人员提供建议。

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