Detecting and recognizing faces accurately has always been a challenge. Differentiating facial features, training images, and producing quick results require a lot of computation. The REaL system we have proposed in this paper discusses its functioning and ways in which computations can be carried out in a short period. REaL experiments are carried out on live images and the recognition rates are promising. The system is also successful in removing non-human objects from its calculations. The system uses a local database to store captured images and feeds the neural network frequently. The captured images are cropped automatically to remove unwanted noise. The system calculates the Euler angles and the probability of whether the face is smiling, has its left eye, and right eyes open or not.
翻译:准确检测和识别面部始终是一个挑战。 区分面部特征、 培训图像和产生快速结果需要大量计算。 我们在本文件中提议的 REAL 系统讨论了其功能以及如何在短期内进行计算。 REAL 实验是在现场图像上进行的, 识别率是大有希望的。 该系统还成功地从计算中清除了非人类物体。 系统使用本地数据库存储捕获的图像,并经常为神经网络提供材料。 捕获的图像是自动裁剪的,以清除不必要的噪音。 系统计算了 Euler 角度以及脸是否微笑、 左眼 和右眼是否打开的概率。