Features to be considered in classifying currency images?

2 ビュー (過去 30 日間)
Sushma
Sushma 2014 年 4 月 2 日
コメント済み: Image Analyst 2014 年 4 月 2 日
Presently, I am considering color and dimension of currency images as important features in classifying given huge set of currency images.
Is it necessary to consider few more features in order to increase the efficiency of classification?
What can be the other features?

回答 (2 件)

Anand
Anand 2014 年 4 月 2 日
  1 件のコメント
Sushma
Sushma 2014 年 4 月 2 日
Hello..Here they have considered ROI but i am applying feature extraction

サインインしてコメントする。


Image Analyst
Image Analyst 2014 年 4 月 2 日
I think color and size should be enough. If the notes are very similar to each other, like US notes, then you can look at the colors in smaller areas, like you divide the note up into quadrants or into 10 by 10 tiles.
  3 件のコメント
Sushma
Sushma 2014 年 4 月 2 日
Btw my image set consists of old and soiled currency notes as well..which may cause some color variation for a smaller area
Image Analyst
Image Analyst 2014 年 4 月 2 日
Yes. It's going to have to be robust enough to handle that. If you have a 10 by 10 grid over the note then you could check each one and each tile "votes" as to what kind of note it thinks it is. Then you call the whole note whichever type of note has the most votes. For example, you have 10x10 = 100 regions. 90 think it's a $10 note, 5 think it's a $5 note, and 5 regions think it's a $20 notes. So call it a $10 note because that's what had the most votes.

サインインしてコメントする。

カテゴリ

Help Center および File ExchangeStatistics and Machine Learning Toolbox についてさらに検索

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by