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Database Construction and System Design based on Scene Image

摘要


With the extensive application of deep learning method in the field of image retrieval, researchers have an increasing demand for scene images containing Chinese cultural sites and scenic spots with geographic information. However, there are few open scene image databases with geographic information. Moreover, some scattered small datasets have the problems of few data samples, inaccurate classification and inconvenient query, which bring a lot of inconvenience to the related research work. In view of these situations, the purpose of this paper is to build an applicable scene image database, and on this basis to develop a scene image retrieval system, to achieve simple retrieval function, to meet the needs of database detection and subsequent function improvement.

參考文獻


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