Analysis of Feature Recognition of Neural Network Method in the String Recognition

Author(s):  
Amit Kumar Gupta ◽  
Yash Pal Singh
2021 ◽  
pp. 2141003
Author(s):  
Chaofeng Li ◽  
Ebin Deni Raj ◽  
Suyel Namasudra

Art can be used to spread an inspirational message to encourage people and accomplish great things in life. The art of communication among people can be a mode of communication to concentrate on common issues to improve humankind. The challenging characteristics in art painting include such as degradation, cracking, and flaking is considered an essential factor. In this paper, the Multilevel Based Convolutional Ancient Recognition Neural Network Method[Formula: see text]M-CARNNM [Formula: see text] has been proposed to incorporate experts’ suggestions, helping artists envisage how the ancient painting may have looked after restoration. Mid-frequency analysis is introduced to reinforce the rough estimation of complete images by adding missing regions and the nearest neighbor pixels to match the maps. A domain-specific pyramid network is used to capture various space context amounts. Experimental results effectively predict the proposed method for large areas of lack of information and produce controllable vector graphics, photographic painting, and high-frequency results.


Methods for evaluation the manufacturability of a vehicle in the field of production and operation based on an energy indicator, expert estimates and usage of a neural network are stated. By using the neural network method the manufacturability of a car in a complex and for individual units is considered. The preparation of the initial data at usage a neural network for predicting the manufacturability of a vehicle is shown; the training algorithm and the architecture for calculating the manufacturability of the main units are given. According to the calculation results, comparative data on the manufacturability vehicles of various brands are given.


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