詳細資訊
書名:Probabilistic Robotics 作者:THRUN 出版社:MIT 出版日期:2005/09/01 ISBN:9780262201629
書名: | Probabilistic Robotics | |||
作者: | THRUN | |||
ISBN: | 9780262201629 | |||
出版社: | The MIT Press | |||
書籍開數、尺寸: | 23.4x20.8x3.6 | |||
頁數: | 646 | |||
#工程
#電子與電機 #控制系統 #自動化與機器人技術 |
詳細資訊
書名:Probabilistic Robotics 作者:THRUN 出版社:MIT 出版日期:2005/09/01 ISBN:9780262201629
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