抽象的な

Character recognition research based on artificial intelligence and maching learning

Ying Liu, Yiming Zhu


In recent years, machine learning becomes a new research focus in the field of artificial intelligence. It has been successfully applied in the complex systems such as: machine vision, speech recognition, natural language processing, web search, recommendation system, intelligent robots etc. Especially, in the last two years the appears of the autopilot, deep QA system which based on artificial intelligence and machine learning technology make people began to rethink the word: machine is invented by human, it can never exceed the level of human intelligence. The Chinese character recognition has been a difficult problem in the field of character recognition. Different from the English text consisting of a small number of characters, it is difficult to use traditional algorithm to identify it automatically. But thanks to the further development of machine artificial intelligence, the automatic identification of Chinese characters has entered the practical stage. Although many domestic and foreign software vendors have launched a rate of Chinese characters automatic identification system which has a good recognition, there is still large room for improvement. In a large number of current domestic literatures, mainly papers aim at the research on automatic recognition of a small amount of characters. It is difficult to be applied to large character set recognition object. This is closely related to the structure of machine learning and learning algorithm. Satisficing votes of each classifier, which is trained previously to classify the characters feature vector, and taking the result of most votes as the final output is the current foreign mainstream solution.


免責事項: この要約は人工知能ツールを使用して翻訳されており、まだレビューまたは確認されていません

インデックス付き

  • キャス
  • Google スカラー
  • Jゲートを開く
  • 中国国家知識基盤 (CNKI)
  • サイテファクター
  • コスモスIF
  • 研究ジャーナル索引作成ディレクトリ (DRJI)
  • 秘密検索エンジン研究所
  • ユーロパブ
  • ICMJE

もっと見る

ジャーナルISSN

ジャーナル h-インデックス

Flyer

オープンアクセスジャーナル