在安全应用中改进面部识别的深度学习算法的发展

Adrian Sean Bein, Alexander Williams
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引用次数: 0

摘要

本研究旨在开发面部识别背景下的人工智能(AI)算法,重点是提高在困难环境条件下的准确性。尽管面部识别技术已经取得了很大的进步,但诸如光线不足、面部表情变化和头部旋转等挑战仍然是必须克服的问题。研究方法包括收集广泛的数据集,涵盖各种环境条件下的各种面孔。然后对这些数据进行处理,并使用计算机图像处理技术提取其特征。此外,一些深度神经网络架构,如卷积神经网络(cnn)和递归神经网络(rnn),被开发、训练和评估用于人脸识别任务。预期的结果是开发出一种能够克服面部识别挑战的人工智能算法,其准确性高于现有方法。特别是在低光照条件和面部表情变化下,人脸识别精度有望显著提高。这项研究对各种安全应用具有重大影响,例如边境监视,建筑物访问控制和公司安全。人脸识别准确率的提高,可以显著降低安全风险,带来更安全、更高效的安防解决方案。总之,这项研究旨在通过先进的人工智能方法带来面部识别技术的创新,并有可能提高各种情况下的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Deep Learning Algorithms for Improved Facial Recognition in Security Applications
This research aims to develop artificial intelligence (AI) algorithms in the context of facial recognition with a focus on increasing accuracy in difficult environmental conditions. Although facial recognition technology has made great progress, challenges such as poor lighting, variations in facial expressions, and head rotation are still problems that must be overcome. The research methodology involved collecting a wide dataset covering a wide variety of faces under various environmental conditions. This data is then processed and its features are extracted using computer image processing techniques. Furthermore, several deep neural network architectures, such as Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs), were developed, trained, and evaluated for face recognition tasks. The expected result is the development of an AI algorithm that is able to overcome challenges in facial recognition with higher accuracy than existing methods. In particular, significant improvements in facial recognition accuracy are expected especially under low lighting conditions and variations in facial expressions. This research has a major impact in a variety of security applications, such as border surveillance, building access control, and corporate security. With higher facial recognition accuracy, security risks can be significantly reduced, resulting in safer and more efficient security solutions. In conclusion, this research aims to bring innovation in facial recognition technology through advanced AI approaches, with the potential to improve security in various contexts.
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