At present, the traditional machine learning methods and convolutional neural
network (CNN) methods are mostly used in image recognition. The feature
extraction process in traditional machine learning for image recognition is
mostly executed by manual, and its generalization ability is not strong
enough. The earliest convolutional neural network also has many defects,
such as high hardware requirements, large training sample size, long
training time, slow convergence speed and low accuracy. To solve the above
problems, this paper proposes a novel deep LeNet-5 convolutional neural
network model for image recognition. On the basis of Lenet-5 model with the
guaranteed recognition rate, the network structure is simplified and the
training speed is improved. Meanwhile, we modify the Logarithmic Rectified
Linear Unit (L_ReLU) of the activation function. Finally, the experiments
are carried out on the MINIST character library to verify the improved
network structure. The recognition ability of the network structure in
different parameter s is analyzed compared with the state-of-the-art
recognition algorithms. In terms of the recognition rate, the proposed
method has exceeded 98%. The results show that the accuracy of the proposed
structure is significantly higher than that of the other recognition
algorithms, which provides a new reference for the current image
recognition.
Online live streaming has been widely used in distant teaching, online live shopping, and so on. Particularly, online teaching live streaming breaks the time and space boundary of teaching and has better interactivity, which is a new distant education mode. As a new online sales model, online live shopping promotes the rapid development of Internet economy. However, the quality of live video affects the user experience. This paper studies the optimization algorithm of ultra-high-definition live streaming, focusing on superresolution technology. Convolutional neural network (CNN) is a multilayer artificial neural network designed to process two-dimensional input data. It takes advantage of CNN in image processing. This paper proposes an image superresolution algorithm based on hybrid dilated convolution and Laplacian pyramid. By mixing the dilated convolution module, the receptive field of the network can be improved more effectively to obtain more context information so that the high-frequency features of the image can be extracted more effectively. Experiment was running on Set5, Set14, Urban100, and BSD100 datasets, and the results reveal that the proposed algorithm outperforms baselines with respect to peak signal to noise ratio (PSNR), structural similarity index measurement (SSIM), and image quality.
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