The research of vehicle model feature extraction

Vehicle identification is one of the key technologies to achieve road transport automation and the deep research of this technology has important practical significance to the development of intelligent transportation. Because image backgrounds of car models are complex, and the count of car models is too large, model identification has long been a research hotspot and difficult. This paper mainly studies how to reasonably extract vehicle model features from images conducts related experiments and obtains experimental results.

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