Abstract

The texture image decomposition of porcelain fragments based on convolutional neural network is a functional algorithm based on energy minimization. It maps the image to a suitable space and can effectively decompose the image structure, texture, and noise. This paper conducts a systematic research on image decomposition based on variational method and compressed sensing reconstruction of convolutional neural network. This paper uses the layered variational image decomposition method to decompose the image into structural components and texture components and uses a compressed sensing algorithm based on hybrid basis to reconstruct the structure and texture components with large data. In compressed sensing, to further increase each feature component, the sparseness of tight framework wavelet-based shearlet transform is constructed and combined with wave atoms as a joint sparse dictionary big data. Under the condition of the same sampling rate, this algorithm can retain more image texture details and big data than the algorithm. The production of big data that meets the characteristics of the background text is actually an image-based normalization method. This method is not very sensitive to the relative position, density, spacing, and thickness of the text. A super-resolution model for certain texture features can improve the restoration effect of such texture images. And the dataset extracted by the classification method used in this paper accounts for 20% of the total dataset, and at the same time, the PSNR value of 0.1 is improved on average. Therefore, taking into account the requirements for future big data experimental training, this article mainly uses jpg/csv two standardized database datasets after segmentation. This dataset minimizes the difference between the same type of base text in the same period to lay the foundation for good big data recognition in the future.

Highlights

  • Hongchang WuE texture image decomposition of porcelain fragments based on convolutional neural network is a functional algorithm based on energy minimization

  • Since entering the 21st century, with the increasing progress of the country’s big data, Internet+, and intelligent manufacturing technology, various technologies in the ceramic light industry have been vigorously developed, and the ancient ceramic industry is no exception [1]

  • The active market brings a series of problems; for example, consumers suffer from price fraud due to the lack of background knowledge of ancient ceramics [4]. erefore, integrating modern science and technology to develop an automatic portable device for the general public that can quickly identify ancient ceramics and perform basic evaluation is a hot spot of public concern and a research topic in the industry [5]

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Summary

Hongchang Wu

E texture image decomposition of porcelain fragments based on convolutional neural network is a functional algorithm based on energy minimization. It maps the image to a suitable space and can effectively decompose the image structure, texture, and noise. Is paper conducts a systematic research on image decomposition based on variational method and compressed sensing reconstruction of convolutional neural network. Is paper uses the layered variational image decomposition method to decompose the image into structural components and texture components and uses a compressed sensing algorithm based on hybrid basis to reconstruct the structure and texture components with large data. Is dataset minimizes the difference between the same type of base text in the same period to lay the foundation for good big data recognition in the future The dataset extracted by the classification method used in this paper accounts for 20% of the total dataset, and at the same time, the PSNR value of 0.1 is improved on average. erefore, taking into account the requirements for future big data experimental training, this article mainly uses jpg/csv two standardized database datasets after segmentation. is dataset minimizes the difference between the same type of base text in the same period to lay the foundation for good big data recognition in the future

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