The document reviews various license plate localization (LPL) algorithms as critical components of intelligent transportation systems (ITS), highlighting their efficacy amidst challenges like varied climatic and lighting conditions. It categorizes these algorithms into mathematical processing, feature-based, and deep learning families, comparing their strengths and weaknesses in terms of processing speed, accuracy, and adaptability to real-time scenarios. Key considerations include performance constraints, noise management, and the ability to handle non-standardized license plates.