Learning OpenCV: Computer Vision with the OpenCV Library (英語) ペーパーバック – イラスト付き, 2008/10/7
Gary Bradski
(著)
著者の作品一覧、著者略歴や口コミなどをご覧いただけます
この著者の 検索結果 を表示
あなたは著者ですか?
著者セントラルはこちら
|
この商品には新版があります:
-
本の長さ580ページ
-
言語英語
-
出版社O'Reilly Media
-
発売日2008/10/7
-
寸法17.78 x 3.05 x 23.34 cm
-
ISBN-100596516134
-
ISBN-13978-0596516130
この商品をチェックした人はこんな商品もチェックしています
この商品を買った人はこんな商品も買っています
- Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systemsペーパーバック
- Learning OpenCV 4 Computer Vision with Python 3: Get to grips with tools, techniques, and algorithms for computer vision and machine learning, 3rd Editionペーパーバック
- Mathematics for Machine Learningペーパーバック
- TinyML: Machine Learning With Tensorflow Lite on Arduino and Ultra-Low-Power Microcontrollersペーパーバック
- Programming Computer Vision with Python: Tools and algorithms for analyzing imagesペーパーバック
- Learning TensorFlow: A Guide to Building Deep Learning Systemsペーパーバック
商品の説明
著者について
Dr. Gary Rost Bradski is a consulting professor in the CS department at Stanford University AI Lab where he mentors robotics, machine learning and computer vision research. He is also Senior Scientist at Willow Garage http://www.willowgarage.com, a recently founded robotics research institute/incubator. He has a BS degree in EECS from U.C. Berkeley and a PhD from Boston University. He has 20 years of industrial experience applying machine learning and computer vision spanning option trading operations at First Union National Bank, to computer vision at Intel Research to machine learning in Intel Manufacturing and several startup companies in between. Gary started the Open Source Computer Vision Library (OpenCV http://sourceforge.net/projects/opencvlibrary/ ), the statistical Machine Learning Library (MLL comes with OpenCV), and the Probabilistic Network Library (PNL). OpenCV is used around the world in research, government and commercially. The vision libraries helped develop a notable part of the commercial Intel performance primitives library (IPP http://tinyurl.com/36ua5s). Gary also organized the vision team for Stanley, the Stanford robot that won the DARPA Grand Challenge autonomous race across the desert for a $2M team prize and helped found the Stanford AI Robotics project at Stanford http://www.cs.stanford.edu/group/stair/ working with Professor Andrew Ng. Gary has over 50 publications and 13 issued patents with 18 pending. He lives in Palo Alto with his wife and 3 daughters and bikes road or mountains as much as he can.
Dr. Adrian Kaehler is a senior scientist at Applied Minds Corporation. His current research includes topics in machine learning, statistical modeling, computer vision and robotics. Adrian received his Ph.D. in Theoretical Physics from Columbia university in 1998. Adrian has since held positions at Intel Corporation and the Stanford University AI Lab, and was a member of the winning Stanley race team in the DARPA Grand Challenge. He has a variety of published papers and patents in physics, electrical engineering, computer science, and robotics.
登録情報
- 出版社 : O'Reilly Media; 第1版 (2008/10/7)
- 発売日 : 2008/10/7
- 言語 : 英語
- ペーパーバック : 580ページ
- ISBN-10 : 0596516134
- ISBN-13 : 978-0596516130
- 寸法 : 17.78 x 3.05 x 23.34 cm
- Amazon 売れ筋ランキング: - 699,684位洋書 (の売れ筋ランキングを見る洋書)
- カスタマーレビュー:
カスタマーレビュー
他の国からのトップレビュー


A boon is it avoids getting too much into the maths, and has many practical, basic, coding examples explaining the various facilities available in the library. Tracking; Segmentation, and various forms of image and video analysis.
The book is excellent for getting you started with coding your ideas.


However, persevere with the book and the OpenCV free library, and you will be richly rewarded.
You simply must make extensive use of the index to dig up the information necessary for completion of the first examples, and perseverence will leave you with a basic test structure into which you can plug the many image processing functions with minimal changes.
This is fun.
Frankly I haven't got the video working yet, and frankly I've been more interested in the static processing since my job needs this more.
I've got the libraries working on both Linux and XP, with splendid, visually impressive, results.
When I get more time I'll be working through to the advanced examples.
Meanwhile, I recommend recent versions of KDevelop-c/c++ if you are working on Linux; the Library dependencies are even easier than windows.

E' dotato di un testo abbastanza chiaro anche se a volte salta qualche passaggio logico.
Il principale problema, per cui lo sconsiglio, è che è aggiornato al 2011. Nel testo, e soprattutto negli esempi, utilizza librerie, funzioni e comandi non più supportati, il che rende troppo difficoltoso l'apprendimento, perché bisogna arrabattarsi su internet per cercare come queste sono state sostituite, la relativa sintassi ecc... a quel punto, se il 70% del tempo lo si passa a cercare su siti internet, tanto vale imparare tutto direttamente lì.
Se ci fosse una nuova edizione sarebbe un buon libro.