School of Computer Engineering, Youngsan University, 288 Junam-Ro, Yangsan, Gyeongnam 50510, Korea.
Intelligent Convergence Research Laboratory, Electronics and Telecommunications Research Institute (ETRI), 218 Gajeong-ro, Yuseong-gu, Daejeon 34129, Korea.
Sensors (Basel). 2020 Jan 31;20(3):785. doi: 10.3390/s20030785.
Although access control based on human face recognition has become popular in consumer applications, it still has several implementation issues before it can realize a stand-alone access control system. Owing to a lack of computational resources, lightweight and computationally efficient face recognition algorithms are required. The conventional access control systems require significant active cooperation from the users despite its non-aggressive nature. The lighting/illumination change is one of the most difficult and challenging problems for human-face-recognition-based access control applications. This paper presents the design and implementation of a user-friendly, stand-alone access control system based on human face recognition at a distance. The local binary pattern (LBP)-AdaBoost framework was employed for face and eyes detection, which is fast and invariant to illumination changes. It can detect faces and eyes of varied sizes at a distance. For fast face recognition with a high accuracy, the Gabor-LBP histogram framework was modified by substituting the Gabor wavelet with Gaussian derivative filters, which reduced the facial feature size by 40% of the Gabor-LBP-based facial features, and was robust to significant illumination changes and complicated backgrounds. The experiments on benchmark datasets produced face recognition accuracies of 97.27% on an E-face dataset and 99.06% on an XM2VTS dataset, respectively. The system achieved a 91.5% true acceptance rate with a 0.28% false acceptance rate and averaged a 5.26 frames/sec processing speed on a newly collected face image and video dataset in an indoor office environment.
虽然基于人脸识别的访问控制在消费类应用中已经很流行,但在实现独立的访问控制系统之前,它仍然存在几个实现问题。由于缺乏计算资源,需要轻量级和计算效率高的人脸识别算法。传统的访问控制系统尽管是非强制性的,但仍需要用户的积极配合。光照/照明变化是基于人脸识别的访问控制应用中最困难和最具挑战性的问题之一。本文提出了一种基于远距离人脸识别的用户友好、独立的访问控制系统的设计与实现。局部二值模式(LBP)-AdaBoost 框架用于人脸和眼睛检测,该框架快速且对光照变化具有不变性。它可以在远距离检测到各种大小的人脸和眼睛。为了实现快速、高精度的人脸识别,修改了基于 Gabor-LBP 直方图的框架,用高斯导数滤波器代替 Gabor 小波,将人脸特征的大小缩小了 40%,并且对显著的光照变化和复杂的背景具有鲁棒性。在基准数据集上的实验分别在 E-face 数据集上达到了 97.27%的人脸识别准确率,在 XM2VTS 数据集上达到了 99.06%的准确率。该系统在新收集的室内办公环境中的人脸图像和视频数据集上实现了 91.5%的真接受率,0.28%的假接受率,平均处理速度为 5.26 帧/秒。