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On the Importance of Image Reading to Public Aesthetics

Jing Wang

Abstract


With the continuous development of the times, people pay more and more attention to image reading. Therefore, this paper discusses the importance of image reading to public aesthetics. This paper first briefly introduces the concept of image recognition, then briefly expounds some important meanings and several common, representative and relatively high degree of understanding and acceptance by the public are commonly used to recognize images, and then uses the method of questionnaire to investigate students' views on image reading and public aesthetics. Finally, the survey shows that, Image reading can help students better understand the trend of public aesthetics and make use of the function of image reading to better analyze aesthetic points.


Keywords


Image Reading; Public Aesthetics; Image Aesthetics; Image Reading

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References


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DOI: http://dx.doi.org/10.18686/ahe.v6i23.6120

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