This work is unique in the use of discrete wavelets that were built from or derived from Chebyshev polynomials of the second and third kind, filter the Discrete Second Chebyshev Wavelets Transform (DSCWT), and derive two effective filters. The Filter Discrete Third Chebyshev Wavelets Transform (FDTCWT) is used in the process of analyzing color images and removing noise and impurities that accompany the image, as well as because of the large amount of data that makes up the image as it is taken. These data are massive, making it difficult to deal with each other during transmission. However to address this issue, the image compression technique is used, with the image not losing information due to the readings that were obtained, and the results were satisfactory. Mean Square Error (MSE), Peak Signal Noise Ratio (PSNR), Bit Per Pixel (BPP), and Compression Ratio (CR) Coronavirus is the initial treatment, while the processing stage is done with network training for Convolutional Neural Networks (CNN) with Discrete Second Chebeshev Wavelets Convolutional Neural Network (DSCWCNN) and Discrete Third Chebeshev Wavelets Convolutional Neural Network (DTCWCNN) to create an efficient algorithm for face recognition, and the best results were achieved in accuracy and in the least amount of time. Two samples of color images that were made or implemented were used. The proposed theory was obtained with fast and good results; the results are evident shown in the tables below.
翻译:本文独特之处在于使用由第二和第三类切比雪夫多项式构建或派生离散小波(DSCWT)的离散小波滤波器,派生两个有效滤波器。色彩图像的分析过程中使用 DSCWT 滤波器和滤波器离散第三类切比雪夫小波变换 (FDTCWT),来去除伴随图像的噪音和杂质,以及因构成图像的大量数据而显得复杂的问题。这些数据是巨大的,导致在传输过程中彼此间的处理成为难题。但是,为了解决这个问题,使用图像压缩技术,图像不会因得到的读数而失去信息,结果是令人满意的。通过均方误差、峰值信噪比、每像素比特数和压缩比 (CR) 对疫情进行了初始处理,处理阶段使用离散小波卷积神经网络 (DSCWCNN) 和离散小波第三类切比雪夫卷积神经网络 (DTCWCNN) 进行网络训练,以创建一种高效的人脸识别算法,最佳结果在准确性和最短时间内实现。实施了两个彩色图像的样本。所提建议的理论获得了快速而良好的效果;结果如下表所示。