Objectives: Modern people’s pursuit and consumption of ceramic products are different from those in the past. Therefore, designing new daily ceramic products full of enthusiasm, touching and spiritual enjoyment is our constant pursuit of innovative goals. The design of daily-use ceramics has developed from satisfying the needs of life at first to pursuing the individuality and emotion of products at later stages, showing different cultural connotations and pursuits in each stage of development. Methods: Information objects under meta-model are obtained by extracting the characteristics of project management information and product design information, reflecting the relationship between information entities, while knowledge objects are obtained by associating related information objects. Results: Emotional information products have more understanding of human psychology in the design process, which runs through the whole process of product interaction design. Conclusion: Through theoretical analysis of emotional design and analysis of a series of classic design cases of daily ceramic products, emotional expression forms of daily ceramic product design are summarized, and emotional design products that can bring people better use experience are designed.
As an important part of cultural heritage, murals reflect the economy, culture, and ideas of different historical periods and are an important basis for historical research. The lines in murals are the core elements to express the beauty of images. They have an irreplaceable special position in murals and are of great significance in the protection and restoration of murals. With the development of image recognition technology, the recognition of mural images has become a key research topic. In recent years, as a new image processing technology, deep learning based on a convolutional neural network is widely used in many fields. Using a convolutional neural network to recognize images has become a very active topic. With the continuous deepening of the number of layers of the convolutional neural network model, its autonomous learning ability of image recognition continues to improve. However, there are still some problems in the current image recognition model based on a convolutional neural network for mural images with rich structural details and complex texture and color. Therefore, according to the texture and structural characteristics of mural images, this paper uses the design idea of a convolutional neural network for reference to carry out research on mural image recognition. The improved algorithm proposed in this paper is tested on the experimental data set of mural images. The experimental results show that the improved algorithm can reduce the recognition error; enhance the edge, texture, and structure information of the reconstructed mural image; and enrich the detail information of the reconstructed mural image.
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