Feature Selection for Data and Pattern Recognition
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چکیده
Spend your few moment to read a book even only few pages. Reading book is not obligation and force for everybody. When you don't want to read, you can get punishment from the publisher. Read a book becomes a choice of your different characteristics. Many people with reading habit will always be enjoyable to read, or on the contrary. For some reasons, this feature selection for data and pattern recognition tends to be the representative book in this website.
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Local gradient pattern - A novel feature representation for facial expression recognition
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