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A Thermal Infrared Face Database With Facial Landmarks and Emotion Labels

机译:具有面部地标和情感标签的热红外面部数据库

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摘要

Thermal infrared imaging is an emerging modality that has gained increasing interest in recent years, mostly due to technical advances resulting in the availability of affordable microbolometer-based IR imaging sensors. However, while sensors are widely available, algorithms for thermal image processing still lack robustness and accuracy when compared to their RGB counterparts. Current methods developed for RGB data make use of machine learning algorithms that require large amounts of labeled images which are currently not available for the thermal domain. In this paper, we address the question whether providing a large number of labeled images would allow the application of current image processing methods on the example of solving challenging face analysis tasks. We introduce a high-resolution thermal facial image database with extensive manual annotations and explore how it can be used to adapt methods from the visual domain for infrared images. In addition, we extend existing approaches for infrared landmark detection with a head pose estimation for improved robustness and analyze the performance of a deep learning method on this task. An evaluation of algorithm performance shows that learning algorithms either outperform available solutions or allow completely new applications that could previously not be addressed. As a conclusion, we prove that investing the effort into acquiring appropriate training data and adapting competitive algorithms is not only a viable approach in analysing thermal infrared images but can also allow outperforming specific task-designed solutions.
机译:热红外成像是一种新兴的方式,近年来受到越来越多的关注,这主要是由于技术的进步,使得人们可以买得起基于微测辐射热计的红外成像传感器。但是,尽管传感器广泛可用,但与RGB同类传感器相比,用于热图像处理的算法仍缺乏鲁棒性和准确性。针对RGB数据开发的当前方法利用机器学习算法,这些算法需要大量的标记图像,而这些图像目前在热域中不可用。在本文中,我们解决了以下问题:提供大量标记图像是否可以在解决具有挑战性的面部分析任务的示例中应用当前的图像处理方法。我们介绍了带有大量人工注释的高分辨率热面部图像数据库,并探讨了如何将其用于从红外图像的视觉领域适应方法。此外,我们通过头部姿势估计扩展了现有的红外界标检测方法,以提高鲁棒性,并分析了针对此任务的深度学习方法的性能。对算法性能的评估表明,学习算法的性能优于现有解决方案,或者允许使用以前无法解决的全新应用。总之,我们证明,投入精力来获取合适的训练数据并采用竞争算法不仅是分析红外热图像的可行方法,而且还可以胜过特定任务设计的解决方案。

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