High-performance and lightweight real-time deep face emotion recognition

Justus Schwan, E. Ghaleb, E. Hortal, S. Asteriadis
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引用次数: 12

Abstract

Deep learning is used for all kinds of tasks which require human-like performance, such as voice and image recognition in smartphones, smart home technology, and self-driving cars. While great advances have been made in the field, results are often not satisfactory when compared to human performance. In the field of facial emotion recognition, especially in the wild, Convolutional Neural Networks (CNN) are employed because of their excellent generalization properties. However, while CNNs can learn a representation for certain object classes, an amount of (annotated) training data roughly proportional to the class's complexity is needed and seldom available. This work describes an advanced pre-processing algorithm for facial images and a transfer learning mechanism, two potential candidates for relaxing this requirement. Using these algorithms, a lightweight face emotion recognition application for Human-Computer Interaction with TurtleBot units was developed.
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高性能、轻量级的实时深度人脸情感识别
深度学习被用于智能手机的语音和图像识别、智能家居技术、自动驾驶汽车等需要类似人类表现的各种任务。虽然这一领域取得了巨大的进步,但与人类的表现相比,结果往往不令人满意。在面部情绪识别领域,特别是在野外,卷积神经网络(CNN)因其优异的泛化特性而被广泛应用。然而,虽然cnn可以学习特定对象类的表示,但需要大量(带注释的)训练数据,这些数据与类的复杂性大致成正比,而且很少可用。这项工作描述了一种先进的面部图像预处理算法和一种迁移学习机制,这是放松这一要求的两个潜在候选算法。利用这些算法,开发了一个轻量级的人脸情感识别应用程序,用于与乌龟机器人单元的人机交互。
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