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首页> 外文期刊>Journal of Sensors >Empirical Investigation of Multimodal Sensors in Novel Deep Facial Expression Recognition In-the-Wild
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Empirical Investigation of Multimodal Sensors in Novel Deep Facial Expression Recognition In-the-Wild

机译:野外新型面部表情识别中多式联传感器的实证研究

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The interest in the facial expression recognition (FER) is increasing day by day due to its practical and potential applications, such as human physiological interaction diagnosis and mental diseases detection. This area has received much attention from the research community in recent years and achieved remarkable results; however, a significant improvement is required in spatial problems. This research work presents a novel framework and proposes an effective and robust solution for FER under an unconstrained environment. Face detection is performed using the supervision of facial attributes. Faceness-Net is used for deep facial part responses for the detection of faces under severe unconstrained variations. In order to improve the generalization problems and avoid insufficient data regime, Deep Convolutional Graphical Adversarial Network (DC-GAN) is utilized. Due to the challenging environmental factors faced in the wild, a large number of noises disrupt feature extraction, thus making it hard to capture ground truth. We leverage different multimodal sensors with a camera that aids in data acquisition, by extracting the features more accurately and improve the overall performance of FER. These intelligent sensors are used to tackle the significant challenges like illumination variance, subject dependence, and head pose. Dual-enhanced capsule network is used which is able to handle the spatial problem. The traditional capsule networks are unable to sufficiently extract the features, as the distance varies greatly between facial features. Therefore, the proposed network is capable of spatial transformation due to action unit aware mechanism and thus forward most desiring features for dynamic routing between capsules. Squashing function is used for the classification function. We have elaborated the effectiveness of our method by validating the results on four popular and versatile databases that outperform all state-of-the-art methods.
机译:由于其实际和潜在的应用,如人体生理相互作用诊断和精神疾病检测,对面部表情识别(FER)的兴趣日益增加。该地区近年来从研究界得到了很多关注,并取得了显着的结果;然而,空间问题需要显着改善。本研究工作提出了一个新颖的框架,并为不受约束环境下的FER提出了有效和强大的解决方案。使用面部属性的监督来执行面部检测。 Faceeness-Net用于深面部部分反应,用于在严重的无约束变异下检测面部的脸部。为了改善泛化问题并避免数据制度不足,利用深卷积图形对抗网络(DC-GaN)。由于野外面临的挑战性环境因素,大量噪音扰乱了特色提取,从而难以捕捉到实践。我们利用不同的多模式传感器,通过更准确地提取特征并提高FER的整体性能来利用不同的多峰传感器。这些智能传感器用于解决照明方差,主题依赖性和头部姿势等重大挑战。使用双增强胶囊网络,其能够处理空间问题。传统的胶囊网络无法充分提取特征,因为距离在面部特征之间变化很大。因此,所提出的网络能够由于动作单元意识机制而具有空间转换,因此向前移动的大多数希望用于胶囊之间的动态路由。挤压功能用于分类功能。我们通过验证了四个流行和多功能数据库的结果来阐述了我们的方法的有效性,这些数据库优于所有最先进的方法。

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