Improving Face Recognition Accuracy through Optimization of Haar and LBP Features in MATLAB

Xiaolei Zhong
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Abstract

As we hasten into the digital age, facial recognition technology has emerged as a pivotal innovation across various domains such as security authentication, surveillance, and identity verification. This research delves into and enhances the Convolutional Neural Network (CNN) framework within the MATLAB environment, substantially augmenting the efficacy of facial recognition algorithms. The manuscript begins by tracing the evolution and current achievements within the facial recognition field, followed by an exploration into the theoretical foundation and key technologies of facial recognition. The aim of this study is to develop an advanced facial recognition algorithm based on CNN, employing efficient image preprocessing techniques such as grayscale conversion, noise reduction, and feature extraction, thereby significantly improving recognition accuracy and processing speed. Experiments conducted within MATLAB showcase the dual advancements in efficiency and speed offered by the optimized algorithm compared to traditional methods. Moreover, the paper discusses the adaptability of this algorithm in complex scenarios and the challenges and strategies likely to be encountered during pragmatic application. The outcomes of this research not only validate the practicality of the proposed algorithm but also illuminate directions and methodologies for the future exploration of facial recognition technology.
通过优化 MATLAB 中的 Haar 和 LBP 特征提高人脸识别精度
随着我们匆匆步入数字时代,面部识别技术已成为安全认证、监控和身份验证等各个领域的关键创新技术。本研究深入探讨并增强了 MATLAB 环境中的卷积神经网络(CNN)框架,大大提高了面部识别算法的功效。手稿首先追溯了人脸识别领域的演变和当前成就,然后探讨了人脸识别的理论基础和关键技术。本研究旨在开发一种基于 CNN 的先进人脸识别算法,采用灰度转换、降噪和特征提取等高效图像预处理技术,从而显著提高识别准确率和处理速度。在 MATLAB 中进行的实验表明,与传统方法相比,优化后的算法在效率和速度上实现了双重提升。此外,论文还讨论了该算法在复杂场景中的适应性,以及在实际应用中可能遇到的挑战和策略。这项研究的成果不仅验证了所提算法的实用性,还为未来人脸识别技术的探索指明了方向和方法。
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