热图像中的人脸识别与验证

Jeba Sonia J, P. Sheeba, Jeena Jacob
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引用次数: 0

摘要

近年来,由于犯罪率的上升,监控已经成为一个至关重要的角色。现有的日间监控研究通过使用深度学习算法来识别和跟踪目标,从而提高了性能。然而,由于低照度和/或恶劣的天气条件,实现夜视相同的性能是困难的。人脸检测是监控中的一项重要任务。提出了一种基于热图像和视觉图像融合的人脸检测模块。融合模块的编码器-解码器网络使用深度卷积从给定的热图像和视觉图像中提取有效特征。通过在更大的波长记录辐射信息,热面解决了视觉面所具有的大部分限制。通过开发热人脸识别方法,扩大了可识别的人脸图像范围。热图像中的人脸识别具有很高的研究范围,并且已经发现,当热图像被训练时,它的性能会更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Identification and Verification in Thermal Images
Surveillance has become a crucial role in recent years, owing to the rise in crime rates. Existing daytime surveillance research has improved performance by employing deep learning algorithms to recognize and track objects. However, due to low illumination and/or poor weather conditions, achieving the same performance for night vision are difficult. Face detection is a crucial task in surveillance. A face detection module based on merging of thermal and visual pictures is proposed. The encoder-decoder network of the fusion module extracts effective features from the given thermal and visual images using depth-wise convolution. By recording radiation information at a greater wavelength, the thermal face solves most of the limitations that visual faces have. The range of facial imageries that can be recognized is expanded by developing a method that recognizes thermal faces. Face recognition in thermal images is having high research scope, and it has been discovered that when thermal images are trained, it performs better.
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